Package org.opencv.aruco
Class Aruco
- java.lang.Object
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- org.opencv.aruco.Aruco
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public class Aruco extends Object
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Field Summary
Fields Modifier and Type Field Description static int
CORNER_REFINE_APRILTAG
static int
CORNER_REFINE_CONTOUR
static int
CORNER_REFINE_NONE
static int
CORNER_REFINE_SUBPIX
static int
DICT_4X4_100
static int
DICT_4X4_1000
static int
DICT_4X4_250
static int
DICT_4X4_50
static int
DICT_5X5_100
static int
DICT_5X5_1000
static int
DICT_5X5_250
static int
DICT_5X5_50
static int
DICT_6X6_100
static int
DICT_6X6_1000
static int
DICT_6X6_250
static int
DICT_6X6_50
static int
DICT_7X7_100
static int
DICT_7X7_1000
static int
DICT_7X7_250
static int
DICT_7X7_50
static int
DICT_APRILTAG_16h5
static int
DICT_APRILTAG_25h9
static int
DICT_APRILTAG_36h10
static int
DICT_APRILTAG_36h11
static int
DICT_ARUCO_ORIGINAL
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Constructor Summary
Constructors Constructor Description Aruco()
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Method Summary
All Methods Static Methods Concrete Methods Deprecated Methods Modifier and Type Method Description static double
calibrateCameraAruco(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs)
It's the same function as #calibrateCameraAruco but without calibration error estimation.static double
calibrateCameraAruco(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs)
It's the same function as #calibrateCameraAruco but without calibration error estimation.static double
calibrateCameraAruco(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs)
It's the same function as #calibrateCameraAruco but without calibration error estimation.static double
calibrateCameraAruco(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, int flags)
It's the same function as #calibrateCameraAruco but without calibration error estimation.static double
calibrateCameraAruco(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, int flags, TermCriteria criteria)
It's the same function as #calibrateCameraAruco but without calibration error estimation.static double
calibrateCameraArucoExtended(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, Mat stdDeviationsIntrinsics, Mat stdDeviationsExtrinsics, Mat perViewErrors)
Calibrate a camera using aruco markersstatic double
calibrateCameraArucoExtended(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, Mat stdDeviationsIntrinsics, Mat stdDeviationsExtrinsics, Mat perViewErrors, int flags)
Calibrate a camera using aruco markersstatic double
calibrateCameraArucoExtended(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, Mat stdDeviationsIntrinsics, Mat stdDeviationsExtrinsics, Mat perViewErrors, int flags, TermCriteria criteria)
Calibrate a camera using aruco markersstatic double
calibrateCameraCharuco(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs)
It's the same function as #calibrateCameraCharuco but without calibration error estimation.static double
calibrateCameraCharuco(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs)
It's the same function as #calibrateCameraCharuco but without calibration error estimation.static double
calibrateCameraCharuco(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs)
It's the same function as #calibrateCameraCharuco but without calibration error estimation.static double
calibrateCameraCharuco(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, int flags)
It's the same function as #calibrateCameraCharuco but without calibration error estimation.static double
calibrateCameraCharuco(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, int flags, TermCriteria criteria)
It's the same function as #calibrateCameraCharuco but without calibration error estimation.static double
calibrateCameraCharucoExtended(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, Mat stdDeviationsIntrinsics, Mat stdDeviationsExtrinsics, Mat perViewErrors)
Calibrate a camera using Charuco cornersstatic double
calibrateCameraCharucoExtended(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, Mat stdDeviationsIntrinsics, Mat stdDeviationsExtrinsics, Mat perViewErrors, int flags)
Calibrate a camera using Charuco cornersstatic double
calibrateCameraCharucoExtended(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, Mat stdDeviationsIntrinsics, Mat stdDeviationsExtrinsics, Mat perViewErrors, int flags, TermCriteria criteria)
Calibrate a camera using Charuco cornersstatic Dictionary
custom_dictionary(int nMarkers, int markerSize)
SEE: generateCustomDictionarystatic Dictionary
custom_dictionary(int nMarkers, int markerSize, int randomSeed)
SEE: generateCustomDictionarystatic Dictionary
custom_dictionary_from(int nMarkers, int markerSize, Dictionary baseDictionary)
Generates a new customizable marker dictionarystatic Dictionary
custom_dictionary_from(int nMarkers, int markerSize, Dictionary baseDictionary, int randomSeed)
Generates a new customizable marker dictionarystatic void
detectCharucoDiamond(Mat image, List<Mat> markerCorners, Mat markerIds, float squareMarkerLengthRate, List<Mat> diamondCorners, Mat diamondIds)
Detect ChArUco Diamond markersstatic void
detectCharucoDiamond(Mat image, List<Mat> markerCorners, Mat markerIds, float squareMarkerLengthRate, List<Mat> diamondCorners, Mat diamondIds, Mat cameraMatrix)
Detect ChArUco Diamond markersstatic void
detectCharucoDiamond(Mat image, List<Mat> markerCorners, Mat markerIds, float squareMarkerLengthRate, List<Mat> diamondCorners, Mat diamondIds, Mat cameraMatrix, Mat distCoeffs)
Detect ChArUco Diamond markersstatic void
detectMarkers(Mat image, Dictionary dictionary, List<Mat> corners, Mat ids)
Basic marker detectionstatic void
detectMarkers(Mat image, Dictionary dictionary, List<Mat> corners, Mat ids, DetectorParameters parameters)
Basic marker detectionstatic void
detectMarkers(Mat image, Dictionary dictionary, List<Mat> corners, Mat ids, DetectorParameters parameters, List<Mat> rejectedImgPoints)
Basic marker detectionstatic void
detectMarkers(Mat image, Dictionary dictionary, List<Mat> corners, Mat ids, DetectorParameters parameters, List<Mat> rejectedImgPoints, Mat cameraMatrix)
Basic marker detectionstatic void
detectMarkers(Mat image, Dictionary dictionary, List<Mat> corners, Mat ids, DetectorParameters parameters, List<Mat> rejectedImgPoints, Mat cameraMatrix, Mat distCoeff)
Basic marker detectionstatic void
drawAxis(Mat image, Mat cameraMatrix, Mat distCoeffs, Mat rvec, Mat tvec, float length)
Deprecated.use cv::drawFrameAxesstatic void
drawDetectedCornersCharuco(Mat image, Mat charucoCorners)
Draws a set of Charuco cornersstatic void
drawDetectedCornersCharuco(Mat image, Mat charucoCorners, Mat charucoIds)
Draws a set of Charuco cornersstatic void
drawDetectedCornersCharuco(Mat image, Mat charucoCorners, Mat charucoIds, Scalar cornerColor)
Draws a set of Charuco cornersstatic void
drawDetectedDiamonds(Mat image, List<Mat> diamondCorners)
Draw a set of detected ChArUco Diamond markersstatic void
drawDetectedDiamonds(Mat image, List<Mat> diamondCorners, Mat diamondIds)
Draw a set of detected ChArUco Diamond markersstatic void
drawDetectedDiamonds(Mat image, List<Mat> diamondCorners, Mat diamondIds, Scalar borderColor)
Draw a set of detected ChArUco Diamond markersstatic void
drawDetectedMarkers(Mat image, List<Mat> corners)
Draw detected markers in imagestatic void
drawDetectedMarkers(Mat image, List<Mat> corners, Mat ids)
Draw detected markers in imagestatic void
drawDetectedMarkers(Mat image, List<Mat> corners, Mat ids, Scalar borderColor)
Draw detected markers in imagestatic void
drawMarker(Dictionary dictionary, int id, int sidePixels, Mat img)
Draw a canonical marker imagestatic void
drawMarker(Dictionary dictionary, int id, int sidePixels, Mat img, int borderBits)
Draw a canonical marker imagestatic void
drawPlanarBoard(Board board, Size outSize, Mat img)
Draw a planar board SEE: _drawPlanarBoardImplstatic void
drawPlanarBoard(Board board, Size outSize, Mat img, int marginSize)
Draw a planar board SEE: _drawPlanarBoardImplstatic void
drawPlanarBoard(Board board, Size outSize, Mat img, int marginSize, int borderBits)
Draw a planar board SEE: _drawPlanarBoardImplstatic int
estimatePoseBoard(List<Mat> corners, Mat ids, Board board, Mat cameraMatrix, Mat distCoeffs, Mat rvec, Mat tvec)
Pose estimation for a board of markersstatic int
estimatePoseBoard(List<Mat> corners, Mat ids, Board board, Mat cameraMatrix, Mat distCoeffs, Mat rvec, Mat tvec, boolean useExtrinsicGuess)
Pose estimation for a board of markersstatic boolean
estimatePoseCharucoBoard(Mat charucoCorners, Mat charucoIds, CharucoBoard board, Mat cameraMatrix, Mat distCoeffs, Mat rvec, Mat tvec)
Pose estimation for a ChArUco board given some of their cornersstatic boolean
estimatePoseCharucoBoard(Mat charucoCorners, Mat charucoIds, CharucoBoard board, Mat cameraMatrix, Mat distCoeffs, Mat rvec, Mat tvec, boolean useExtrinsicGuess)
Pose estimation for a ChArUco board given some of their cornersstatic void
estimatePoseSingleMarkers(List<Mat> corners, float markerLength, Mat cameraMatrix, Mat distCoeffs, Mat rvecs, Mat tvecs)
Pose estimation for single markersstatic void
estimatePoseSingleMarkers(List<Mat> corners, float markerLength, Mat cameraMatrix, Mat distCoeffs, Mat rvecs, Mat tvecs, Mat _objPoints)
Pose estimation for single markersstatic void
getBoardObjectAndImagePoints(Board board, List<Mat> detectedCorners, Mat detectedIds, Mat objPoints, Mat imgPoints)
Given a board configuration and a set of detected markers, returns the corresponding image points and object points to call solvePnPstatic Dictionary
getPredefinedDictionary(int dict)
Returns one of the predefined dictionaries referenced by DICT_*.static int
interpolateCornersCharuco(List<Mat> markerCorners, Mat markerIds, Mat image, CharucoBoard board, Mat charucoCorners, Mat charucoIds)
Interpolate position of ChArUco board cornersstatic int
interpolateCornersCharuco(List<Mat> markerCorners, Mat markerIds, Mat image, CharucoBoard board, Mat charucoCorners, Mat charucoIds, Mat cameraMatrix)
Interpolate position of ChArUco board cornersstatic int
interpolateCornersCharuco(List<Mat> markerCorners, Mat markerIds, Mat image, CharucoBoard board, Mat charucoCorners, Mat charucoIds, Mat cameraMatrix, Mat distCoeffs)
Interpolate position of ChArUco board cornersstatic int
interpolateCornersCharuco(List<Mat> markerCorners, Mat markerIds, Mat image, CharucoBoard board, Mat charucoCorners, Mat charucoIds, Mat cameraMatrix, Mat distCoeffs, int minMarkers)
Interpolate position of ChArUco board cornersstatic void
refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners)
Refind not detected markers based on the already detected and the board layoutstatic void
refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners, Mat cameraMatrix)
Refind not detected markers based on the already detected and the board layoutstatic void
refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners, Mat cameraMatrix, Mat distCoeffs)
Refind not detected markers based on the already detected and the board layoutstatic void
refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners, Mat cameraMatrix, Mat distCoeffs, float minRepDistance)
Refind not detected markers based on the already detected and the board layoutstatic void
refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners, Mat cameraMatrix, Mat distCoeffs, float minRepDistance, float errorCorrectionRate)
Refind not detected markers based on the already detected and the board layoutstatic void
refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners, Mat cameraMatrix, Mat distCoeffs, float minRepDistance, float errorCorrectionRate, boolean checkAllOrders)
Refind not detected markers based on the already detected and the board layoutstatic void
refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners, Mat cameraMatrix, Mat distCoeffs, float minRepDistance, float errorCorrectionRate, boolean checkAllOrders, Mat recoveredIdxs)
Refind not detected markers based on the already detected and the board layoutstatic void
refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners, Mat cameraMatrix, Mat distCoeffs, float minRepDistance, float errorCorrectionRate, boolean checkAllOrders, Mat recoveredIdxs, DetectorParameters parameters)
Refind not detected markers based on the already detected and the board layoutstatic boolean
testCharucoCornersCollinear(CharucoBoard _board, Mat _charucoIds)
test whether the ChArUco markers are collinear
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Field Detail
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CORNER_REFINE_NONE
public static final int CORNER_REFINE_NONE
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CORNER_REFINE_SUBPIX
public static final int CORNER_REFINE_SUBPIX
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- Constant Field Values
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CORNER_REFINE_CONTOUR
public static final int CORNER_REFINE_CONTOUR
- See Also:
- Constant Field Values
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CORNER_REFINE_APRILTAG
public static final int CORNER_REFINE_APRILTAG
- See Also:
- Constant Field Values
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DICT_4X4_50
public static final int DICT_4X4_50
- See Also:
- Constant Field Values
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DICT_4X4_100
public static final int DICT_4X4_100
- See Also:
- Constant Field Values
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DICT_4X4_250
public static final int DICT_4X4_250
- See Also:
- Constant Field Values
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DICT_4X4_1000
public static final int DICT_4X4_1000
- See Also:
- Constant Field Values
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DICT_5X5_50
public static final int DICT_5X5_50
- See Also:
- Constant Field Values
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DICT_5X5_100
public static final int DICT_5X5_100
- See Also:
- Constant Field Values
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DICT_5X5_250
public static final int DICT_5X5_250
- See Also:
- Constant Field Values
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DICT_5X5_1000
public static final int DICT_5X5_1000
- See Also:
- Constant Field Values
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DICT_6X6_50
public static final int DICT_6X6_50
- See Also:
- Constant Field Values
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DICT_6X6_100
public static final int DICT_6X6_100
- See Also:
- Constant Field Values
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DICT_6X6_250
public static final int DICT_6X6_250
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- Constant Field Values
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DICT_6X6_1000
public static final int DICT_6X6_1000
- See Also:
- Constant Field Values
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DICT_7X7_50
public static final int DICT_7X7_50
- See Also:
- Constant Field Values
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DICT_7X7_100
public static final int DICT_7X7_100
- See Also:
- Constant Field Values
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DICT_7X7_250
public static final int DICT_7X7_250
- See Also:
- Constant Field Values
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DICT_7X7_1000
public static final int DICT_7X7_1000
- See Also:
- Constant Field Values
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DICT_ARUCO_ORIGINAL
public static final int DICT_ARUCO_ORIGINAL
- See Also:
- Constant Field Values
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DICT_APRILTAG_16h5
public static final int DICT_APRILTAG_16h5
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DICT_APRILTAG_25h9
public static final int DICT_APRILTAG_25h9
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DICT_APRILTAG_36h10
public static final int DICT_APRILTAG_36h10
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DICT_APRILTAG_36h11
public static final int DICT_APRILTAG_36h11
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Method Detail
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detectMarkers
public static void detectMarkers(Mat image, Dictionary dictionary, List<Mat> corners, Mat ids, DetectorParameters parameters, List<Mat> rejectedImgPoints, Mat cameraMatrix, Mat distCoeff)
Basic marker detection- Parameters:
image
- input imagedictionary
- indicates the type of markers that will be searchedcorners
- vector of detected marker corners. For each marker, its four corners are provided, (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array is Nx4. The order of the corners is clockwise.ids
- vector of identifiers of the detected markers. The identifier is of type int (e.g. std::vector<int>). For N detected markers, the size of ids is also N. The identifiers have the same order than the markers in the imgPoints array.parameters
- marker detection parametersrejectedImgPoints
- contains the imgPoints of those squares whose inner code has not a correct codification. Useful for debugging purposes.cameraMatrix
- optional input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeff
- optional vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elements Performs marker detection in the input image. Only markers included in the specific dictionary are searched. For each detected marker, it returns the 2D position of its corner in the image and its corresponding identifier. Note that this function does not perform pose estimation. SEE: estimatePoseSingleMarkers, estimatePoseBoard
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detectMarkers
public static void detectMarkers(Mat image, Dictionary dictionary, List<Mat> corners, Mat ids, DetectorParameters parameters, List<Mat> rejectedImgPoints, Mat cameraMatrix)
Basic marker detection- Parameters:
image
- input imagedictionary
- indicates the type of markers that will be searchedcorners
- vector of detected marker corners. For each marker, its four corners are provided, (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array is Nx4. The order of the corners is clockwise.ids
- vector of identifiers of the detected markers. The identifier is of type int (e.g. std::vector<int>). For N detected markers, the size of ids is also N. The identifiers have the same order than the markers in the imgPoints array.parameters
- marker detection parametersrejectedImgPoints
- contains the imgPoints of those squares whose inner code has not a correct codification. Useful for debugging purposes.cameraMatrix
- optional input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\) \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elements Performs marker detection in the input image. Only markers included in the specific dictionary are searched. For each detected marker, it returns the 2D position of its corner in the image and its corresponding identifier. Note that this function does not perform pose estimation. SEE: estimatePoseSingleMarkers, estimatePoseBoard
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detectMarkers
public static void detectMarkers(Mat image, Dictionary dictionary, List<Mat> corners, Mat ids, DetectorParameters parameters, List<Mat> rejectedImgPoints)
Basic marker detection- Parameters:
image
- input imagedictionary
- indicates the type of markers that will be searchedcorners
- vector of detected marker corners. For each marker, its four corners are provided, (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array is Nx4. The order of the corners is clockwise.ids
- vector of identifiers of the detected markers. The identifier is of type int (e.g. std::vector<int>). For N detected markers, the size of ids is also N. The identifiers have the same order than the markers in the imgPoints array.parameters
- marker detection parametersrejectedImgPoints
- contains the imgPoints of those squares whose inner code has not a correct codification. Useful for debugging purposes. \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\) \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elements Performs marker detection in the input image. Only markers included in the specific dictionary are searched. For each detected marker, it returns the 2D position of its corner in the image and its corresponding identifier. Note that this function does not perform pose estimation. SEE: estimatePoseSingleMarkers, estimatePoseBoard
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detectMarkers
public static void detectMarkers(Mat image, Dictionary dictionary, List<Mat> corners, Mat ids, DetectorParameters parameters)
Basic marker detection- Parameters:
image
- input imagedictionary
- indicates the type of markers that will be searchedcorners
- vector of detected marker corners. For each marker, its four corners are provided, (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array is Nx4. The order of the corners is clockwise.ids
- vector of identifiers of the detected markers. The identifier is of type int (e.g. std::vector<int>). For N detected markers, the size of ids is also N. The identifiers have the same order than the markers in the imgPoints array.parameters
- marker detection parameters correct codification. Useful for debugging purposes. \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\) \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elements Performs marker detection in the input image. Only markers included in the specific dictionary are searched. For each detected marker, it returns the 2D position of its corner in the image and its corresponding identifier. Note that this function does not perform pose estimation. SEE: estimatePoseSingleMarkers, estimatePoseBoard
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detectMarkers
public static void detectMarkers(Mat image, Dictionary dictionary, List<Mat> corners, Mat ids)
Basic marker detection- Parameters:
image
- input imagedictionary
- indicates the type of markers that will be searchedcorners
- vector of detected marker corners. For each marker, its four corners are provided, (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array is Nx4. The order of the corners is clockwise.ids
- vector of identifiers of the detected markers. The identifier is of type int (e.g. std::vector<int>). For N detected markers, the size of ids is also N. The identifiers have the same order than the markers in the imgPoints array. correct codification. Useful for debugging purposes. \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\) \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elements Performs marker detection in the input image. Only markers included in the specific dictionary are searched. For each detected marker, it returns the 2D position of its corner in the image and its corresponding identifier. Note that this function does not perform pose estimation. SEE: estimatePoseSingleMarkers, estimatePoseBoard
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estimatePoseSingleMarkers
public static void estimatePoseSingleMarkers(List<Mat> corners, float markerLength, Mat cameraMatrix, Mat distCoeffs, Mat rvecs, Mat tvecs, Mat _objPoints)
Pose estimation for single markers- Parameters:
corners
- vector of already detected markers corners. For each marker, its four corners are provided, (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array should be Nx4. The order of the corners should be clockwise. SEE: detectMarkersmarkerLength
- the length of the markers' side. The returning translation vectors will be in the same unit. Normally, unit is meters.cameraMatrix
- input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeffs
- vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsrvecs
- array of output rotation vectors (SEE: Rodrigues) (e.g. std::vector<cv::Vec3d>). Each element in rvecs corresponds to the specific marker in imgPoints.tvecs
- array of output translation vectors (e.g. std::vector<cv::Vec3d>). Each element in tvecs corresponds to the specific marker in imgPoints._objPoints
- array of object points of all the marker corners This function receives the detected markers and returns their pose estimation respect to the camera individually. So for each marker, one rotation and translation vector is returned. The returned transformation is the one that transforms points from each marker coordinate system to the camera coordinate system. The marker corrdinate system is centered on the middle of the marker, with the Z axis perpendicular to the marker plane. The coordinates of the four corners of the marker in its own coordinate system are: (-markerLength/2, markerLength/2, 0), (markerLength/2, markerLength/2, 0), (markerLength/2, -markerLength/2, 0), (-markerLength/2, -markerLength/2, 0)
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estimatePoseSingleMarkers
public static void estimatePoseSingleMarkers(List<Mat> corners, float markerLength, Mat cameraMatrix, Mat distCoeffs, Mat rvecs, Mat tvecs)
Pose estimation for single markers- Parameters:
corners
- vector of already detected markers corners. For each marker, its four corners are provided, (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array should be Nx4. The order of the corners should be clockwise. SEE: detectMarkersmarkerLength
- the length of the markers' side. The returning translation vectors will be in the same unit. Normally, unit is meters.cameraMatrix
- input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeffs
- vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsrvecs
- array of output rotation vectors (SEE: Rodrigues) (e.g. std::vector<cv::Vec3d>). Each element in rvecs corresponds to the specific marker in imgPoints.tvecs
- array of output translation vectors (e.g. std::vector<cv::Vec3d>). Each element in tvecs corresponds to the specific marker in imgPoints. This function receives the detected markers and returns their pose estimation respect to the camera individually. So for each marker, one rotation and translation vector is returned. The returned transformation is the one that transforms points from each marker coordinate system to the camera coordinate system. The marker corrdinate system is centered on the middle of the marker, with the Z axis perpendicular to the marker plane. The coordinates of the four corners of the marker in its own coordinate system are: (-markerLength/2, markerLength/2, 0), (markerLength/2, markerLength/2, 0), (markerLength/2, -markerLength/2, 0), (-markerLength/2, -markerLength/2, 0)
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estimatePoseBoard
public static int estimatePoseBoard(List<Mat> corners, Mat ids, Board board, Mat cameraMatrix, Mat distCoeffs, Mat rvec, Mat tvec, boolean useExtrinsicGuess)
Pose estimation for a board of markers- Parameters:
corners
- vector of already detected markers corners. For each marker, its four corners are provided, (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array should be Nx4. The order of the corners should be clockwise.ids
- list of identifiers for each marker in cornersboard
- layout of markers in the board. The layout is composed by the marker identifiers and the positions of each marker corner in the board reference system.cameraMatrix
- input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeffs
- vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsrvec
- Output vector (e.g. cv::Mat) corresponding to the rotation vector of the board (see cv::Rodrigues). Used as initial guess if not empty.tvec
- Output vector (e.g. cv::Mat) corresponding to the translation vector of the board.useExtrinsicGuess
- defines whether initial guess for \b rvec and \b tvec will be used or not. Used as initial guess if not empty. This function receives the detected markers and returns the pose of a marker board composed by those markers. A Board of marker has a single world coordinate system which is defined by the board layout. The returned transformation is the one that transforms points from the board coordinate system to the camera coordinate system. Input markers that are not included in the board layout are ignored. The function returns the number of markers from the input employed for the board pose estimation. Note that returning a 0 means the pose has not been estimated.- Returns:
- automatically generated
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estimatePoseBoard
public static int estimatePoseBoard(List<Mat> corners, Mat ids, Board board, Mat cameraMatrix, Mat distCoeffs, Mat rvec, Mat tvec)
Pose estimation for a board of markers- Parameters:
corners
- vector of already detected markers corners. For each marker, its four corners are provided, (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array should be Nx4. The order of the corners should be clockwise.ids
- list of identifiers for each marker in cornersboard
- layout of markers in the board. The layout is composed by the marker identifiers and the positions of each marker corner in the board reference system.cameraMatrix
- input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeffs
- vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsrvec
- Output vector (e.g. cv::Mat) corresponding to the rotation vector of the board (see cv::Rodrigues). Used as initial guess if not empty.tvec
- Output vector (e.g. cv::Mat) corresponding to the translation vector of the board. Used as initial guess if not empty. This function receives the detected markers and returns the pose of a marker board composed by those markers. A Board of marker has a single world coordinate system which is defined by the board layout. The returned transformation is the one that transforms points from the board coordinate system to the camera coordinate system. Input markers that are not included in the board layout are ignored. The function returns the number of markers from the input employed for the board pose estimation. Note that returning a 0 means the pose has not been estimated.- Returns:
- automatically generated
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refineDetectedMarkers
public static void refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners, Mat cameraMatrix, Mat distCoeffs, float minRepDistance, float errorCorrectionRate, boolean checkAllOrders, Mat recoveredIdxs, DetectorParameters parameters)
Refind not detected markers based on the already detected and the board layout- Parameters:
image
- input imageboard
- layout of markers in the board.detectedCorners
- vector of already detected marker corners.detectedIds
- vector of already detected marker identifiers.rejectedCorners
- vector of rejected candidates during the marker detection process.cameraMatrix
- optional input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeffs
- optional vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsminRepDistance
- minimum distance between the corners of the rejected candidate and the reprojected marker in order to consider it as a correspondence.errorCorrectionRate
- rate of allowed erroneous bits respect to the error correction capability of the used dictionary. -1 ignores the error correction step.checkAllOrders
- Consider the four posible corner orders in the rejectedCorners array. If it set to false, only the provided corner order is considered (default true).recoveredIdxs
- Optional array to returns the indexes of the recovered candidates in the original rejectedCorners array.parameters
- marker detection parameters This function tries to find markers that were not detected in the basic detecMarkers function. First, based on the current detected marker and the board layout, the function interpolates the position of the missing markers. Then it tries to find correspondence between the reprojected markers and the rejected candidates based on the minRepDistance and errorCorrectionRate parameters. If camera parameters and distortion coefficients are provided, missing markers are reprojected using projectPoint function. If not, missing marker projections are interpolated using global homography, and all the marker corners in the board must have the same Z coordinate.
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refineDetectedMarkers
public static void refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners, Mat cameraMatrix, Mat distCoeffs, float minRepDistance, float errorCorrectionRate, boolean checkAllOrders, Mat recoveredIdxs)
Refind not detected markers based on the already detected and the board layout- Parameters:
image
- input imageboard
- layout of markers in the board.detectedCorners
- vector of already detected marker corners.detectedIds
- vector of already detected marker identifiers.rejectedCorners
- vector of rejected candidates during the marker detection process.cameraMatrix
- optional input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeffs
- optional vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsminRepDistance
- minimum distance between the corners of the rejected candidate and the reprojected marker in order to consider it as a correspondence.errorCorrectionRate
- rate of allowed erroneous bits respect to the error correction capability of the used dictionary. -1 ignores the error correction step.checkAllOrders
- Consider the four posible corner orders in the rejectedCorners array. If it set to false, only the provided corner order is considered (default true).recoveredIdxs
- Optional array to returns the indexes of the recovered candidates in the original rejectedCorners array. This function tries to find markers that were not detected in the basic detecMarkers function. First, based on the current detected marker and the board layout, the function interpolates the position of the missing markers. Then it tries to find correspondence between the reprojected markers and the rejected candidates based on the minRepDistance and errorCorrectionRate parameters. If camera parameters and distortion coefficients are provided, missing markers are reprojected using projectPoint function. If not, missing marker projections are interpolated using global homography, and all the marker corners in the board must have the same Z coordinate.
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refineDetectedMarkers
public static void refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners, Mat cameraMatrix, Mat distCoeffs, float minRepDistance, float errorCorrectionRate, boolean checkAllOrders)
Refind not detected markers based on the already detected and the board layout- Parameters:
image
- input imageboard
- layout of markers in the board.detectedCorners
- vector of already detected marker corners.detectedIds
- vector of already detected marker identifiers.rejectedCorners
- vector of rejected candidates during the marker detection process.cameraMatrix
- optional input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeffs
- optional vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsminRepDistance
- minimum distance between the corners of the rejected candidate and the reprojected marker in order to consider it as a correspondence.errorCorrectionRate
- rate of allowed erroneous bits respect to the error correction capability of the used dictionary. -1 ignores the error correction step.checkAllOrders
- Consider the four posible corner orders in the rejectedCorners array. If it set to false, only the provided corner order is considered (default true). original rejectedCorners array. This function tries to find markers that were not detected in the basic detecMarkers function. First, based on the current detected marker and the board layout, the function interpolates the position of the missing markers. Then it tries to find correspondence between the reprojected markers and the rejected candidates based on the minRepDistance and errorCorrectionRate parameters. If camera parameters and distortion coefficients are provided, missing markers are reprojected using projectPoint function. If not, missing marker projections are interpolated using global homography, and all the marker corners in the board must have the same Z coordinate.
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refineDetectedMarkers
public static void refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners, Mat cameraMatrix, Mat distCoeffs, float minRepDistance, float errorCorrectionRate)
Refind not detected markers based on the already detected and the board layout- Parameters:
image
- input imageboard
- layout of markers in the board.detectedCorners
- vector of already detected marker corners.detectedIds
- vector of already detected marker identifiers.rejectedCorners
- vector of rejected candidates during the marker detection process.cameraMatrix
- optional input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeffs
- optional vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsminRepDistance
- minimum distance between the corners of the rejected candidate and the reprojected marker in order to consider it as a correspondence.errorCorrectionRate
- rate of allowed erroneous bits respect to the error correction capability of the used dictionary. -1 ignores the error correction step. If it set to false, only the provided corner order is considered (default true). original rejectedCorners array. This function tries to find markers that were not detected in the basic detecMarkers function. First, based on the current detected marker and the board layout, the function interpolates the position of the missing markers. Then it tries to find correspondence between the reprojected markers and the rejected candidates based on the minRepDistance and errorCorrectionRate parameters. If camera parameters and distortion coefficients are provided, missing markers are reprojected using projectPoint function. If not, missing marker projections are interpolated using global homography, and all the marker corners in the board must have the same Z coordinate.
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refineDetectedMarkers
public static void refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners, Mat cameraMatrix, Mat distCoeffs, float minRepDistance)
Refind not detected markers based on the already detected and the board layout- Parameters:
image
- input imageboard
- layout of markers in the board.detectedCorners
- vector of already detected marker corners.detectedIds
- vector of already detected marker identifiers.rejectedCorners
- vector of rejected candidates during the marker detection process.cameraMatrix
- optional input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeffs
- optional vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsminRepDistance
- minimum distance between the corners of the rejected candidate and the reprojected marker in order to consider it as a correspondence. capability of the used dictionary. -1 ignores the error correction step. If it set to false, only the provided corner order is considered (default true). original rejectedCorners array. This function tries to find markers that were not detected in the basic detecMarkers function. First, based on the current detected marker and the board layout, the function interpolates the position of the missing markers. Then it tries to find correspondence between the reprojected markers and the rejected candidates based on the minRepDistance and errorCorrectionRate parameters. If camera parameters and distortion coefficients are provided, missing markers are reprojected using projectPoint function. If not, missing marker projections are interpolated using global homography, and all the marker corners in the board must have the same Z coordinate.
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refineDetectedMarkers
public static void refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners, Mat cameraMatrix, Mat distCoeffs)
Refind not detected markers based on the already detected and the board layout- Parameters:
image
- input imageboard
- layout of markers in the board.detectedCorners
- vector of already detected marker corners.detectedIds
- vector of already detected marker identifiers.rejectedCorners
- vector of rejected candidates during the marker detection process.cameraMatrix
- optional input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeffs
- optional vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elements reprojected marker in order to consider it as a correspondence. capability of the used dictionary. -1 ignores the error correction step. If it set to false, only the provided corner order is considered (default true). original rejectedCorners array. This function tries to find markers that were not detected in the basic detecMarkers function. First, based on the current detected marker and the board layout, the function interpolates the position of the missing markers. Then it tries to find correspondence between the reprojected markers and the rejected candidates based on the minRepDistance and errorCorrectionRate parameters. If camera parameters and distortion coefficients are provided, missing markers are reprojected using projectPoint function. If not, missing marker projections are interpolated using global homography, and all the marker corners in the board must have the same Z coordinate.
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refineDetectedMarkers
public static void refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners, Mat cameraMatrix)
Refind not detected markers based on the already detected and the board layout- Parameters:
image
- input imageboard
- layout of markers in the board.detectedCorners
- vector of already detected marker corners.detectedIds
- vector of already detected marker identifiers.rejectedCorners
- vector of rejected candidates during the marker detection process.cameraMatrix
- optional input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\) \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elements reprojected marker in order to consider it as a correspondence. capability of the used dictionary. -1 ignores the error correction step. If it set to false, only the provided corner order is considered (default true). original rejectedCorners array. This function tries to find markers that were not detected in the basic detecMarkers function. First, based on the current detected marker and the board layout, the function interpolates the position of the missing markers. Then it tries to find correspondence between the reprojected markers and the rejected candidates based on the minRepDistance and errorCorrectionRate parameters. If camera parameters and distortion coefficients are provided, missing markers are reprojected using projectPoint function. If not, missing marker projections are interpolated using global homography, and all the marker corners in the board must have the same Z coordinate.
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refineDetectedMarkers
public static void refineDetectedMarkers(Mat image, Board board, List<Mat> detectedCorners, Mat detectedIds, List<Mat> rejectedCorners)
Refind not detected markers based on the already detected and the board layout- Parameters:
image
- input imageboard
- layout of markers in the board.detectedCorners
- vector of already detected marker corners.detectedIds
- vector of already detected marker identifiers.rejectedCorners
- vector of rejected candidates during the marker detection process. \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\) \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elements reprojected marker in order to consider it as a correspondence. capability of the used dictionary. -1 ignores the error correction step. If it set to false, only the provided corner order is considered (default true). original rejectedCorners array. This function tries to find markers that were not detected in the basic detecMarkers function. First, based on the current detected marker and the board layout, the function interpolates the position of the missing markers. Then it tries to find correspondence between the reprojected markers and the rejected candidates based on the minRepDistance and errorCorrectionRate parameters. If camera parameters and distortion coefficients are provided, missing markers are reprojected using projectPoint function. If not, missing marker projections are interpolated using global homography, and all the marker corners in the board must have the same Z coordinate.
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drawDetectedMarkers
public static void drawDetectedMarkers(Mat image, List<Mat> corners, Mat ids, Scalar borderColor)
Draw detected markers in image- Parameters:
image
- input/output image. It must have 1 or 3 channels. The number of channels is not altered.corners
- positions of marker corners on input image. (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array should be Nx4. The order of the corners should be clockwise.ids
- vector of identifiers for markers in markersCorners . Optional, if not provided, ids are not painted.borderColor
- color of marker borders. Rest of colors (text color and first corner color) are calculated based on this one to improve visualization. Given an array of detected marker corners and its corresponding ids, this functions draws the markers in the image. The marker borders are painted and the markers identifiers if provided. Useful for debugging purposes.
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drawDetectedMarkers
public static void drawDetectedMarkers(Mat image, List<Mat> corners, Mat ids)
Draw detected markers in image- Parameters:
image
- input/output image. It must have 1 or 3 channels. The number of channels is not altered.corners
- positions of marker corners on input image. (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array should be Nx4. The order of the corners should be clockwise.ids
- vector of identifiers for markers in markersCorners . Optional, if not provided, ids are not painted. are calculated based on this one to improve visualization. Given an array of detected marker corners and its corresponding ids, this functions draws the markers in the image. The marker borders are painted and the markers identifiers if provided. Useful for debugging purposes.
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drawDetectedMarkers
public static void drawDetectedMarkers(Mat image, List<Mat> corners)
Draw detected markers in image- Parameters:
image
- input/output image. It must have 1 or 3 channels. The number of channels is not altered.corners
- positions of marker corners on input image. (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array should be Nx4. The order of the corners should be clockwise. Optional, if not provided, ids are not painted. are calculated based on this one to improve visualization. Given an array of detected marker corners and its corresponding ids, this functions draws the markers in the image. The marker borders are painted and the markers identifiers if provided. Useful for debugging purposes.
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drawAxis
@Deprecated public static void drawAxis(Mat image, Mat cameraMatrix, Mat distCoeffs, Mat rvec, Mat tvec, float length)
Deprecated.use cv::drawFrameAxesDraw coordinate system axis from pose estimation- Parameters:
image
- input/output image. It must have 1 or 3 channels. The number of channels is not altered.cameraMatrix
- input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeffs
- vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsrvec
- rotation vector of the coordinate system that will be drawn. (SEE: Rodrigues).tvec
- translation vector of the coordinate system that will be drawn.length
- length of the painted axis in the same unit than tvec (usually in meters) Given the pose estimation of a marker or board, this function draws the axis of the world coordinate system, i.e. the system centered on the marker/board. Useful for debugging purposes.
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drawMarker
public static void drawMarker(Dictionary dictionary, int id, int sidePixels, Mat img, int borderBits)
Draw a canonical marker image- Parameters:
dictionary
- dictionary of markers indicating the type of markersid
- identifier of the marker that will be returned. It has to be a valid id in the specified dictionary.sidePixels
- size of the image in pixelsimg
- output image with the markerborderBits
- width of the marker border. This function returns a marker image in its canonical form (i.e. ready to be printed)
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drawMarker
public static void drawMarker(Dictionary dictionary, int id, int sidePixels, Mat img)
Draw a canonical marker image- Parameters:
dictionary
- dictionary of markers indicating the type of markersid
- identifier of the marker that will be returned. It has to be a valid id in the specified dictionary.sidePixels
- size of the image in pixelsimg
- output image with the marker This function returns a marker image in its canonical form (i.e. ready to be printed)
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drawPlanarBoard
public static void drawPlanarBoard(Board board, Size outSize, Mat img, int marginSize, int borderBits)
Draw a planar board SEE: _drawPlanarBoardImpl- Parameters:
board
- layout of the board that will be drawn. The board should be planar, z coordinate is ignoredoutSize
- size of the output image in pixels.img
- output image with the board. The size of this image will be outSize and the board will be on the center, keeping the board proportions.marginSize
- minimum margins (in pixels) of the board in the output imageborderBits
- width of the marker borders. This function return the image of a planar board, ready to be printed. It assumes the Board layout specified is planar by ignoring the z coordinates of the object points.
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drawPlanarBoard
public static void drawPlanarBoard(Board board, Size outSize, Mat img, int marginSize)
Draw a planar board SEE: _drawPlanarBoardImpl- Parameters:
board
- layout of the board that will be drawn. The board should be planar, z coordinate is ignoredoutSize
- size of the output image in pixels.img
- output image with the board. The size of this image will be outSize and the board will be on the center, keeping the board proportions.marginSize
- minimum margins (in pixels) of the board in the output image This function return the image of a planar board, ready to be printed. It assumes the Board layout specified is planar by ignoring the z coordinates of the object points.
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drawPlanarBoard
public static void drawPlanarBoard(Board board, Size outSize, Mat img)
Draw a planar board SEE: _drawPlanarBoardImpl- Parameters:
board
- layout of the board that will be drawn. The board should be planar, z coordinate is ignoredoutSize
- size of the output image in pixels.img
- output image with the board. The size of this image will be outSize and the board will be on the center, keeping the board proportions. This function return the image of a planar board, ready to be printed. It assumes the Board layout specified is planar by ignoring the z coordinates of the object points.
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calibrateCameraArucoExtended
public static double calibrateCameraArucoExtended(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, Mat stdDeviationsIntrinsics, Mat stdDeviationsExtrinsics, Mat perViewErrors, int flags, TermCriteria criteria)
Calibrate a camera using aruco markers- Parameters:
corners
- vector of detected marker corners in all frames. The corners should have the same format returned by detectMarkers (see #detectMarkers).ids
- list of identifiers for each marker in cornerscounter
- number of markers in each frame so that corners and ids can be splitboard
- Marker Board layoutimageSize
- Size of the image used only to initialize the intrinsic camera matrix.cameraMatrix
- Output 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\) . If CV\_CALIB\_USE\_INTRINSIC\_GUESS and/or CV_CALIB_FIX_ASPECT_RATIO are specified, some or all of fx, fy, cx, cy must be initialized before calling the function.distCoeffs
- Output vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsrvecs
- Output vector of rotation vectors (see Rodrigues ) estimated for each board view (e.g. std::vector<cv::Mat>>). That is, each k-th rotation vector together with the corresponding k-th translation vector (see the next output parameter description) brings the board pattern from the model coordinate space (in which object points are specified) to the world coordinate space, that is, a real position of the board pattern in the k-th pattern view (k=0.. *M* -1).tvecs
- Output vector of translation vectors estimated for each pattern view.stdDeviationsIntrinsics
- Output vector of standard deviations estimated for intrinsic parameters. Order of deviations values: \((f_x, f_y, c_x, c_y, k_1, k_2, p_1, p_2, k_3, k_4, k_5, k_6 , s_1, s_2, s_3, s_4, \tau_x, \tau_y)\) If one of parameters is not estimated, it's deviation is equals to zero.stdDeviationsExtrinsics
- Output vector of standard deviations estimated for extrinsic parameters. Order of deviations values: \((R_1, T_1, \dotsc , R_M, T_M)\) where M is number of pattern views, \(R_i, T_i\) are concatenated 1x3 vectors.perViewErrors
- Output vector of average re-projection errors estimated for each pattern view.flags
- flags Different flags for the calibration process (see #calibrateCamera for details).criteria
- Termination criteria for the iterative optimization algorithm. This function calibrates a camera using an Aruco Board. The function receives a list of detected markers from several views of the Board. The process is similar to the chessboard calibration in calibrateCamera(). The function returns the final re-projection error.- Returns:
- automatically generated
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calibrateCameraArucoExtended
public static double calibrateCameraArucoExtended(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, Mat stdDeviationsIntrinsics, Mat stdDeviationsExtrinsics, Mat perViewErrors, int flags)
Calibrate a camera using aruco markers- Parameters:
corners
- vector of detected marker corners in all frames. The corners should have the same format returned by detectMarkers (see #detectMarkers).ids
- list of identifiers for each marker in cornerscounter
- number of markers in each frame so that corners and ids can be splitboard
- Marker Board layoutimageSize
- Size of the image used only to initialize the intrinsic camera matrix.cameraMatrix
- Output 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\) . If CV\_CALIB\_USE\_INTRINSIC\_GUESS and/or CV_CALIB_FIX_ASPECT_RATIO are specified, some or all of fx, fy, cx, cy must be initialized before calling the function.distCoeffs
- Output vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsrvecs
- Output vector of rotation vectors (see Rodrigues ) estimated for each board view (e.g. std::vector<cv::Mat>>). That is, each k-th rotation vector together with the corresponding k-th translation vector (see the next output parameter description) brings the board pattern from the model coordinate space (in which object points are specified) to the world coordinate space, that is, a real position of the board pattern in the k-th pattern view (k=0.. *M* -1).tvecs
- Output vector of translation vectors estimated for each pattern view.stdDeviationsIntrinsics
- Output vector of standard deviations estimated for intrinsic parameters. Order of deviations values: \((f_x, f_y, c_x, c_y, k_1, k_2, p_1, p_2, k_3, k_4, k_5, k_6 , s_1, s_2, s_3, s_4, \tau_x, \tau_y)\) If one of parameters is not estimated, it's deviation is equals to zero.stdDeviationsExtrinsics
- Output vector of standard deviations estimated for extrinsic parameters. Order of deviations values: \((R_1, T_1, \dotsc , R_M, T_M)\) where M is number of pattern views, \(R_i, T_i\) are concatenated 1x3 vectors.perViewErrors
- Output vector of average re-projection errors estimated for each pattern view.flags
- flags Different flags for the calibration process (see #calibrateCamera for details). This function calibrates a camera using an Aruco Board. The function receives a list of detected markers from several views of the Board. The process is similar to the chessboard calibration in calibrateCamera(). The function returns the final re-projection error.- Returns:
- automatically generated
-
calibrateCameraArucoExtended
public static double calibrateCameraArucoExtended(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, Mat stdDeviationsIntrinsics, Mat stdDeviationsExtrinsics, Mat perViewErrors)
Calibrate a camera using aruco markers- Parameters:
corners
- vector of detected marker corners in all frames. The corners should have the same format returned by detectMarkers (see #detectMarkers).ids
- list of identifiers for each marker in cornerscounter
- number of markers in each frame so that corners and ids can be splitboard
- Marker Board layoutimageSize
- Size of the image used only to initialize the intrinsic camera matrix.cameraMatrix
- Output 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\) . If CV\_CALIB\_USE\_INTRINSIC\_GUESS and/or CV_CALIB_FIX_ASPECT_RATIO are specified, some or all of fx, fy, cx, cy must be initialized before calling the function.distCoeffs
- Output vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsrvecs
- Output vector of rotation vectors (see Rodrigues ) estimated for each board view (e.g. std::vector<cv::Mat>>). That is, each k-th rotation vector together with the corresponding k-th translation vector (see the next output parameter description) brings the board pattern from the model coordinate space (in which object points are specified) to the world coordinate space, that is, a real position of the board pattern in the k-th pattern view (k=0.. *M* -1).tvecs
- Output vector of translation vectors estimated for each pattern view.stdDeviationsIntrinsics
- Output vector of standard deviations estimated for intrinsic parameters. Order of deviations values: \((f_x, f_y, c_x, c_y, k_1, k_2, p_1, p_2, k_3, k_4, k_5, k_6 , s_1, s_2, s_3, s_4, \tau_x, \tau_y)\) If one of parameters is not estimated, it's deviation is equals to zero.stdDeviationsExtrinsics
- Output vector of standard deviations estimated for extrinsic parameters. Order of deviations values: \((R_1, T_1, \dotsc , R_M, T_M)\) where M is number of pattern views, \(R_i, T_i\) are concatenated 1x3 vectors.perViewErrors
- Output vector of average re-projection errors estimated for each pattern view. This function calibrates a camera using an Aruco Board. The function receives a list of detected markers from several views of the Board. The process is similar to the chessboard calibration in calibrateCamera(). The function returns the final re-projection error.- Returns:
- automatically generated
-
calibrateCameraAruco
public static double calibrateCameraAruco(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, int flags, TermCriteria criteria)
It's the same function as #calibrateCameraAruco but without calibration error estimation.- Parameters:
corners
- automatically generatedids
- automatically generatedcounter
- automatically generatedboard
- automatically generatedimageSize
- automatically generatedcameraMatrix
- automatically generateddistCoeffs
- automatically generatedrvecs
- automatically generatedtvecs
- automatically generatedflags
- automatically generatedcriteria
- automatically generated- Returns:
- automatically generated
-
calibrateCameraAruco
public static double calibrateCameraAruco(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, int flags)
It's the same function as #calibrateCameraAruco but without calibration error estimation.- Parameters:
corners
- automatically generatedids
- automatically generatedcounter
- automatically generatedboard
- automatically generatedimageSize
- automatically generatedcameraMatrix
- automatically generateddistCoeffs
- automatically generatedrvecs
- automatically generatedtvecs
- automatically generatedflags
- automatically generated- Returns:
- automatically generated
-
calibrateCameraAruco
public static double calibrateCameraAruco(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs)
It's the same function as #calibrateCameraAruco but without calibration error estimation.- Parameters:
corners
- automatically generatedids
- automatically generatedcounter
- automatically generatedboard
- automatically generatedimageSize
- automatically generatedcameraMatrix
- automatically generateddistCoeffs
- automatically generatedrvecs
- automatically generatedtvecs
- automatically generated- Returns:
- automatically generated
-
calibrateCameraAruco
public static double calibrateCameraAruco(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs)
It's the same function as #calibrateCameraAruco but without calibration error estimation.- Parameters:
corners
- automatically generatedids
- automatically generatedcounter
- automatically generatedboard
- automatically generatedimageSize
- automatically generatedcameraMatrix
- automatically generateddistCoeffs
- automatically generatedrvecs
- automatically generated- Returns:
- automatically generated
-
calibrateCameraAruco
public static double calibrateCameraAruco(List<Mat> corners, Mat ids, Mat counter, Board board, Size imageSize, Mat cameraMatrix, Mat distCoeffs)
It's the same function as #calibrateCameraAruco but without calibration error estimation.- Parameters:
corners
- automatically generatedids
- automatically generatedcounter
- automatically generatedboard
- automatically generatedimageSize
- automatically generatedcameraMatrix
- automatically generateddistCoeffs
- automatically generated- Returns:
- automatically generated
-
getBoardObjectAndImagePoints
public static void getBoardObjectAndImagePoints(Board board, List<Mat> detectedCorners, Mat detectedIds, Mat objPoints, Mat imgPoints)
Given a board configuration and a set of detected markers, returns the corresponding image points and object points to call solvePnP- Parameters:
board
- Marker board layout.detectedCorners
- List of detected marker corners of the board.detectedIds
- List of identifiers for each marker.objPoints
- Vector of vectors of board marker points in the board coordinate space.imgPoints
- Vector of vectors of the projections of board marker corner points.
-
interpolateCornersCharuco
public static int interpolateCornersCharuco(List<Mat> markerCorners, Mat markerIds, Mat image, CharucoBoard board, Mat charucoCorners, Mat charucoIds, Mat cameraMatrix, Mat distCoeffs, int minMarkers)
Interpolate position of ChArUco board corners- Parameters:
markerCorners
- vector of already detected markers corners. For each marker, its four corners are provided, (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array should be Nx4. The order of the corners should be clockwise.markerIds
- list of identifiers for each marker in cornersimage
- input image necesary for corner refinement. Note that markers are not detected and should be sent in corners and ids parameters.board
- layout of ChArUco board.charucoCorners
- interpolated chessboard cornerscharucoIds
- interpolated chessboard corners identifierscameraMatrix
- optional 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeffs
- optional vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsminMarkers
- number of adjacent markers that must be detected to return a charuco corner This function receives the detected markers and returns the 2D position of the chessboard corners from a ChArUco board using the detected Aruco markers. If camera parameters are provided, the process is based in an approximated pose estimation, else it is based on local homography. Only visible corners are returned. For each corner, its corresponding identifier is also returned in charucoIds. The function returns the number of interpolated corners.- Returns:
- automatically generated
-
interpolateCornersCharuco
public static int interpolateCornersCharuco(List<Mat> markerCorners, Mat markerIds, Mat image, CharucoBoard board, Mat charucoCorners, Mat charucoIds, Mat cameraMatrix, Mat distCoeffs)
Interpolate position of ChArUco board corners- Parameters:
markerCorners
- vector of already detected markers corners. For each marker, its four corners are provided, (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array should be Nx4. The order of the corners should be clockwise.markerIds
- list of identifiers for each marker in cornersimage
- input image necesary for corner refinement. Note that markers are not detected and should be sent in corners and ids parameters.board
- layout of ChArUco board.charucoCorners
- interpolated chessboard cornerscharucoIds
- interpolated chessboard corners identifierscameraMatrix
- optional 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeffs
- optional vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elements This function receives the detected markers and returns the 2D position of the chessboard corners from a ChArUco board using the detected Aruco markers. If camera parameters are provided, the process is based in an approximated pose estimation, else it is based on local homography. Only visible corners are returned. For each corner, its corresponding identifier is also returned in charucoIds. The function returns the number of interpolated corners.- Returns:
- automatically generated
-
interpolateCornersCharuco
public static int interpolateCornersCharuco(List<Mat> markerCorners, Mat markerIds, Mat image, CharucoBoard board, Mat charucoCorners, Mat charucoIds, Mat cameraMatrix)
Interpolate position of ChArUco board corners- Parameters:
markerCorners
- vector of already detected markers corners. For each marker, its four corners are provided, (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array should be Nx4. The order of the corners should be clockwise.markerIds
- list of identifiers for each marker in cornersimage
- input image necesary for corner refinement. Note that markers are not detected and should be sent in corners and ids parameters.board
- layout of ChArUco board.charucoCorners
- interpolated chessboard cornerscharucoIds
- interpolated chessboard corners identifierscameraMatrix
- optional 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\) \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elements This function receives the detected markers and returns the 2D position of the chessboard corners from a ChArUco board using the detected Aruco markers. If camera parameters are provided, the process is based in an approximated pose estimation, else it is based on local homography. Only visible corners are returned. For each corner, its corresponding identifier is also returned in charucoIds. The function returns the number of interpolated corners.- Returns:
- automatically generated
-
interpolateCornersCharuco
public static int interpolateCornersCharuco(List<Mat> markerCorners, Mat markerIds, Mat image, CharucoBoard board, Mat charucoCorners, Mat charucoIds)
Interpolate position of ChArUco board corners- Parameters:
markerCorners
- vector of already detected markers corners. For each marker, its four corners are provided, (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array should be Nx4. The order of the corners should be clockwise.markerIds
- list of identifiers for each marker in cornersimage
- input image necesary for corner refinement. Note that markers are not detected and should be sent in corners and ids parameters.board
- layout of ChArUco board.charucoCorners
- interpolated chessboard cornerscharucoIds
- interpolated chessboard corners identifiers \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\) \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elements This function receives the detected markers and returns the 2D position of the chessboard corners from a ChArUco board using the detected Aruco markers. If camera parameters are provided, the process is based in an approximated pose estimation, else it is based on local homography. Only visible corners are returned. For each corner, its corresponding identifier is also returned in charucoIds. The function returns the number of interpolated corners.- Returns:
- automatically generated
-
estimatePoseCharucoBoard
public static boolean estimatePoseCharucoBoard(Mat charucoCorners, Mat charucoIds, CharucoBoard board, Mat cameraMatrix, Mat distCoeffs, Mat rvec, Mat tvec, boolean useExtrinsicGuess)
Pose estimation for a ChArUco board given some of their corners- Parameters:
charucoCorners
- vector of detected charuco cornerscharucoIds
- list of identifiers for each corner in charucoCornersboard
- layout of ChArUco board.cameraMatrix
- input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeffs
- vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsrvec
- Output vector (e.g. cv::Mat) corresponding to the rotation vector of the board (see cv::Rodrigues).tvec
- Output vector (e.g. cv::Mat) corresponding to the translation vector of the board.useExtrinsicGuess
- defines whether initial guess for \b rvec and \b tvec will be used or not. This function estimates a Charuco board pose from some detected corners. The function checks if the input corners are enough and valid to perform pose estimation. If pose estimation is valid, returns true, else returns false.- Returns:
- automatically generated
-
estimatePoseCharucoBoard
public static boolean estimatePoseCharucoBoard(Mat charucoCorners, Mat charucoIds, CharucoBoard board, Mat cameraMatrix, Mat distCoeffs, Mat rvec, Mat tvec)
Pose estimation for a ChArUco board given some of their corners- Parameters:
charucoCorners
- vector of detected charuco cornerscharucoIds
- list of identifiers for each corner in charucoCornersboard
- layout of ChArUco board.cameraMatrix
- input 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\)distCoeffs
- vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsrvec
- Output vector (e.g. cv::Mat) corresponding to the rotation vector of the board (see cv::Rodrigues).tvec
- Output vector (e.g. cv::Mat) corresponding to the translation vector of the board. This function estimates a Charuco board pose from some detected corners. The function checks if the input corners are enough and valid to perform pose estimation. If pose estimation is valid, returns true, else returns false.- Returns:
- automatically generated
-
drawDetectedCornersCharuco
public static void drawDetectedCornersCharuco(Mat image, Mat charucoCorners, Mat charucoIds, Scalar cornerColor)
Draws a set of Charuco corners- Parameters:
image
- input/output image. It must have 1 or 3 channels. The number of channels is not altered.charucoCorners
- vector of detected charuco cornerscharucoIds
- list of identifiers for each corner in charucoCornerscornerColor
- color of the square surrounding each corner This function draws a set of detected Charuco corners. If identifiers vector is provided, it also draws the id of each corner.
-
drawDetectedCornersCharuco
public static void drawDetectedCornersCharuco(Mat image, Mat charucoCorners, Mat charucoIds)
Draws a set of Charuco corners- Parameters:
image
- input/output image. It must have 1 or 3 channels. The number of channels is not altered.charucoCorners
- vector of detected charuco cornerscharucoIds
- list of identifiers for each corner in charucoCorners This function draws a set of detected Charuco corners. If identifiers vector is provided, it also draws the id of each corner.
-
drawDetectedCornersCharuco
public static void drawDetectedCornersCharuco(Mat image, Mat charucoCorners)
Draws a set of Charuco corners- Parameters:
image
- input/output image. It must have 1 or 3 channels. The number of channels is not altered.charucoCorners
- vector of detected charuco corners This function draws a set of detected Charuco corners. If identifiers vector is provided, it also draws the id of each corner.
-
calibrateCameraCharucoExtended
public static double calibrateCameraCharucoExtended(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, Mat stdDeviationsIntrinsics, Mat stdDeviationsExtrinsics, Mat perViewErrors, int flags, TermCriteria criteria)
Calibrate a camera using Charuco corners- Parameters:
charucoCorners
- vector of detected charuco corners per framecharucoIds
- list of identifiers for each corner in charucoCorners per frameboard
- Marker Board layoutimageSize
- input image sizecameraMatrix
- Output 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\) . If CV\_CALIB\_USE\_INTRINSIC\_GUESS and/or CV_CALIB_FIX_ASPECT_RATIO are specified, some or all of fx, fy, cx, cy must be initialized before calling the function.distCoeffs
- Output vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsrvecs
- Output vector of rotation vectors (see Rodrigues ) estimated for each board view (e.g. std::vector<cv::Mat>>). That is, each k-th rotation vector together with the corresponding k-th translation vector (see the next output parameter description) brings the board pattern from the model coordinate space (in which object points are specified) to the world coordinate space, that is, a real position of the board pattern in the k-th pattern view (k=0.. *M* -1).tvecs
- Output vector of translation vectors estimated for each pattern view.stdDeviationsIntrinsics
- Output vector of standard deviations estimated for intrinsic parameters. Order of deviations values: \((f_x, f_y, c_x, c_y, k_1, k_2, p_1, p_2, k_3, k_4, k_5, k_6 , s_1, s_2, s_3, s_4, \tau_x, \tau_y)\) If one of parameters is not estimated, it's deviation is equals to zero.stdDeviationsExtrinsics
- Output vector of standard deviations estimated for extrinsic parameters. Order of deviations values: \((R_1, T_1, \dotsc , R_M, T_M)\) where M is number of pattern views, \(R_i, T_i\) are concatenated 1x3 vectors.perViewErrors
- Output vector of average re-projection errors estimated for each pattern view.flags
- flags Different flags for the calibration process (see #calibrateCamera for details).criteria
- Termination criteria for the iterative optimization algorithm. This function calibrates a camera using a set of corners of a Charuco Board. The function receives a list of detected corners and its identifiers from several views of the Board. The function returns the final re-projection error.- Returns:
- automatically generated
-
calibrateCameraCharucoExtended
public static double calibrateCameraCharucoExtended(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, Mat stdDeviationsIntrinsics, Mat stdDeviationsExtrinsics, Mat perViewErrors, int flags)
Calibrate a camera using Charuco corners- Parameters:
charucoCorners
- vector of detected charuco corners per framecharucoIds
- list of identifiers for each corner in charucoCorners per frameboard
- Marker Board layoutimageSize
- input image sizecameraMatrix
- Output 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\) . If CV\_CALIB\_USE\_INTRINSIC\_GUESS and/or CV_CALIB_FIX_ASPECT_RATIO are specified, some or all of fx, fy, cx, cy must be initialized before calling the function.distCoeffs
- Output vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsrvecs
- Output vector of rotation vectors (see Rodrigues ) estimated for each board view (e.g. std::vector<cv::Mat>>). That is, each k-th rotation vector together with the corresponding k-th translation vector (see the next output parameter description) brings the board pattern from the model coordinate space (in which object points are specified) to the world coordinate space, that is, a real position of the board pattern in the k-th pattern view (k=0.. *M* -1).tvecs
- Output vector of translation vectors estimated for each pattern view.stdDeviationsIntrinsics
- Output vector of standard deviations estimated for intrinsic parameters. Order of deviations values: \((f_x, f_y, c_x, c_y, k_1, k_2, p_1, p_2, k_3, k_4, k_5, k_6 , s_1, s_2, s_3, s_4, \tau_x, \tau_y)\) If one of parameters is not estimated, it's deviation is equals to zero.stdDeviationsExtrinsics
- Output vector of standard deviations estimated for extrinsic parameters. Order of deviations values: \((R_1, T_1, \dotsc , R_M, T_M)\) where M is number of pattern views, \(R_i, T_i\) are concatenated 1x3 vectors.perViewErrors
- Output vector of average re-projection errors estimated for each pattern view.flags
- flags Different flags for the calibration process (see #calibrateCamera for details). This function calibrates a camera using a set of corners of a Charuco Board. The function receives a list of detected corners and its identifiers from several views of the Board. The function returns the final re-projection error.- Returns:
- automatically generated
-
calibrateCameraCharucoExtended
public static double calibrateCameraCharucoExtended(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, Mat stdDeviationsIntrinsics, Mat stdDeviationsExtrinsics, Mat perViewErrors)
Calibrate a camera using Charuco corners- Parameters:
charucoCorners
- vector of detected charuco corners per framecharucoIds
- list of identifiers for each corner in charucoCorners per frameboard
- Marker Board layoutimageSize
- input image sizecameraMatrix
- Output 3x3 floating-point camera matrix \(A = \vecthreethree{f_x}{0}{c_x}{0}{f_y}{c_y}{0}{0}{1}\) . If CV\_CALIB\_USE\_INTRINSIC\_GUESS and/or CV_CALIB_FIX_ASPECT_RATIO are specified, some or all of fx, fy, cx, cy must be initialized before calling the function.distCoeffs
- Output vector of distortion coefficients \((k_1, k_2, p_1, p_2[, k_3[, k_4, k_5, k_6],[s_1, s_2, s_3, s_4]])\) of 4, 5, 8 or 12 elementsrvecs
- Output vector of rotation vectors (see Rodrigues ) estimated for each board view (e.g. std::vector<cv::Mat>>). That is, each k-th rotation vector together with the corresponding k-th translation vector (see the next output parameter description) brings the board pattern from the model coordinate space (in which object points are specified) to the world coordinate space, that is, a real position of the board pattern in the k-th pattern view (k=0.. *M* -1).tvecs
- Output vector of translation vectors estimated for each pattern view.stdDeviationsIntrinsics
- Output vector of standard deviations estimated for intrinsic parameters. Order of deviations values: \((f_x, f_y, c_x, c_y, k_1, k_2, p_1, p_2, k_3, k_4, k_5, k_6 , s_1, s_2, s_3, s_4, \tau_x, \tau_y)\) If one of parameters is not estimated, it's deviation is equals to zero.stdDeviationsExtrinsics
- Output vector of standard deviations estimated for extrinsic parameters. Order of deviations values: \((R_1, T_1, \dotsc , R_M, T_M)\) where M is number of pattern views, \(R_i, T_i\) are concatenated 1x3 vectors.perViewErrors
- Output vector of average re-projection errors estimated for each pattern view. This function calibrates a camera using a set of corners of a Charuco Board. The function receives a list of detected corners and its identifiers from several views of the Board. The function returns the final re-projection error.- Returns:
- automatically generated
-
calibrateCameraCharuco
public static double calibrateCameraCharuco(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, int flags, TermCriteria criteria)
It's the same function as #calibrateCameraCharuco but without calibration error estimation.- Parameters:
charucoCorners
- automatically generatedcharucoIds
- automatically generatedboard
- automatically generatedimageSize
- automatically generatedcameraMatrix
- automatically generateddistCoeffs
- automatically generatedrvecs
- automatically generatedtvecs
- automatically generatedflags
- automatically generatedcriteria
- automatically generated- Returns:
- automatically generated
-
calibrateCameraCharuco
public static double calibrateCameraCharuco(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs, int flags)
It's the same function as #calibrateCameraCharuco but without calibration error estimation.- Parameters:
charucoCorners
- automatically generatedcharucoIds
- automatically generatedboard
- automatically generatedimageSize
- automatically generatedcameraMatrix
- automatically generateddistCoeffs
- automatically generatedrvecs
- automatically generatedtvecs
- automatically generatedflags
- automatically generated- Returns:
- automatically generated
-
calibrateCameraCharuco
public static double calibrateCameraCharuco(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs, List<Mat> tvecs)
It's the same function as #calibrateCameraCharuco but without calibration error estimation.- Parameters:
charucoCorners
- automatically generatedcharucoIds
- automatically generatedboard
- automatically generatedimageSize
- automatically generatedcameraMatrix
- automatically generateddistCoeffs
- automatically generatedrvecs
- automatically generatedtvecs
- automatically generated- Returns:
- automatically generated
-
calibrateCameraCharuco
public static double calibrateCameraCharuco(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs, List<Mat> rvecs)
It's the same function as #calibrateCameraCharuco but without calibration error estimation.- Parameters:
charucoCorners
- automatically generatedcharucoIds
- automatically generatedboard
- automatically generatedimageSize
- automatically generatedcameraMatrix
- automatically generateddistCoeffs
- automatically generatedrvecs
- automatically generated- Returns:
- automatically generated
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calibrateCameraCharuco
public static double calibrateCameraCharuco(List<Mat> charucoCorners, List<Mat> charucoIds, CharucoBoard board, Size imageSize, Mat cameraMatrix, Mat distCoeffs)
It's the same function as #calibrateCameraCharuco but without calibration error estimation.- Parameters:
charucoCorners
- automatically generatedcharucoIds
- automatically generatedboard
- automatically generatedimageSize
- automatically generatedcameraMatrix
- automatically generateddistCoeffs
- automatically generated- Returns:
- automatically generated
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detectCharucoDiamond
public static void detectCharucoDiamond(Mat image, List<Mat> markerCorners, Mat markerIds, float squareMarkerLengthRate, List<Mat> diamondCorners, Mat diamondIds, Mat cameraMatrix, Mat distCoeffs)
Detect ChArUco Diamond markers- Parameters:
image
- input image necessary for corner subpixel.markerCorners
- list of detected marker corners from detectMarkers function.markerIds
- list of marker ids in markerCorners.squareMarkerLengthRate
- rate between square and marker length: squareMarkerLengthRate = squareLength/markerLength. The real units are not necessary.diamondCorners
- output list of detected diamond corners (4 corners per diamond). The order is the same than in marker corners: top left, top right, bottom right and bottom left. Similar format than the corners returned by detectMarkers (e.g std::vector<std::vector<cv::Point2f> > ).diamondIds
- ids of the diamonds in diamondCorners. The id of each diamond is in fact of type Vec4i, so each diamond has 4 ids, which are the ids of the aruco markers composing the diamond.cameraMatrix
- Optional camera calibration matrix.distCoeffs
- Optional camera distortion coefficients. This function detects Diamond markers from the previous detected ArUco markers. The diamonds are returned in the diamondCorners and diamondIds parameters. If camera calibration parameters are provided, the diamond search is based on reprojection. If not, diamond search is based on homography. Homography is faster than reprojection but can slightly reduce the detection rate.
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detectCharucoDiamond
public static void detectCharucoDiamond(Mat image, List<Mat> markerCorners, Mat markerIds, float squareMarkerLengthRate, List<Mat> diamondCorners, Mat diamondIds, Mat cameraMatrix)
Detect ChArUco Diamond markers- Parameters:
image
- input image necessary for corner subpixel.markerCorners
- list of detected marker corners from detectMarkers function.markerIds
- list of marker ids in markerCorners.squareMarkerLengthRate
- rate between square and marker length: squareMarkerLengthRate = squareLength/markerLength. The real units are not necessary.diamondCorners
- output list of detected diamond corners (4 corners per diamond). The order is the same than in marker corners: top left, top right, bottom right and bottom left. Similar format than the corners returned by detectMarkers (e.g std::vector<std::vector<cv::Point2f> > ).diamondIds
- ids of the diamonds in diamondCorners. The id of each diamond is in fact of type Vec4i, so each diamond has 4 ids, which are the ids of the aruco markers composing the diamond.cameraMatrix
- Optional camera calibration matrix. This function detects Diamond markers from the previous detected ArUco markers. The diamonds are returned in the diamondCorners and diamondIds parameters. If camera calibration parameters are provided, the diamond search is based on reprojection. If not, diamond search is based on homography. Homography is faster than reprojection but can slightly reduce the detection rate.
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detectCharucoDiamond
public static void detectCharucoDiamond(Mat image, List<Mat> markerCorners, Mat markerIds, float squareMarkerLengthRate, List<Mat> diamondCorners, Mat diamondIds)
Detect ChArUco Diamond markers- Parameters:
image
- input image necessary for corner subpixel.markerCorners
- list of detected marker corners from detectMarkers function.markerIds
- list of marker ids in markerCorners.squareMarkerLengthRate
- rate between square and marker length: squareMarkerLengthRate = squareLength/markerLength. The real units are not necessary.diamondCorners
- output list of detected diamond corners (4 corners per diamond). The order is the same than in marker corners: top left, top right, bottom right and bottom left. Similar format than the corners returned by detectMarkers (e.g std::vector<std::vector<cv::Point2f> > ).diamondIds
- ids of the diamonds in diamondCorners. The id of each diamond is in fact of type Vec4i, so each diamond has 4 ids, which are the ids of the aruco markers composing the diamond. This function detects Diamond markers from the previous detected ArUco markers. The diamonds are returned in the diamondCorners and diamondIds parameters. If camera calibration parameters are provided, the diamond search is based on reprojection. If not, diamond search is based on homography. Homography is faster than reprojection but can slightly reduce the detection rate.
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drawDetectedDiamonds
public static void drawDetectedDiamonds(Mat image, List<Mat> diamondCorners, Mat diamondIds, Scalar borderColor)
Draw a set of detected ChArUco Diamond markers- Parameters:
image
- input/output image. It must have 1 or 3 channels. The number of channels is not altered.diamondCorners
- positions of diamond corners in the same format returned by detectCharucoDiamond(). (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array should be Nx4. The order of the corners should be clockwise.diamondIds
- vector of identifiers for diamonds in diamondCorners, in the same format returned by detectCharucoDiamond() (e.g. std::vector<Vec4i>). Optional, if not provided, ids are not painted.borderColor
- color of marker borders. Rest of colors (text color and first corner color) are calculated based on this one. Given an array of detected diamonds, this functions draws them in the image. The marker borders are painted and the markers identifiers if provided. Useful for debugging purposes.
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drawDetectedDiamonds
public static void drawDetectedDiamonds(Mat image, List<Mat> diamondCorners, Mat diamondIds)
Draw a set of detected ChArUco Diamond markers- Parameters:
image
- input/output image. It must have 1 or 3 channels. The number of channels is not altered.diamondCorners
- positions of diamond corners in the same format returned by detectCharucoDiamond(). (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array should be Nx4. The order of the corners should be clockwise.diamondIds
- vector of identifiers for diamonds in diamondCorners, in the same format returned by detectCharucoDiamond() (e.g. std::vector<Vec4i>). Optional, if not provided, ids are not painted. are calculated based on this one. Given an array of detected diamonds, this functions draws them in the image. The marker borders are painted and the markers identifiers if provided. Useful for debugging purposes.
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drawDetectedDiamonds
public static void drawDetectedDiamonds(Mat image, List<Mat> diamondCorners)
Draw a set of detected ChArUco Diamond markers- Parameters:
image
- input/output image. It must have 1 or 3 channels. The number of channels is not altered.diamondCorners
- positions of diamond corners in the same format returned by detectCharucoDiamond(). (e.g std::vector<std::vector<cv::Point2f> > ). For N detected markers, the dimensions of this array should be Nx4. The order of the corners should be clockwise. returned by detectCharucoDiamond() (e.g. std::vector<Vec4i>). Optional, if not provided, ids are not painted. are calculated based on this one. Given an array of detected diamonds, this functions draws them in the image. The marker borders are painted and the markers identifiers if provided. Useful for debugging purposes.
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testCharucoCornersCollinear
public static boolean testCharucoCornersCollinear(CharucoBoard _board, Mat _charucoIds)
test whether the ChArUco markers are collinear- Parameters:
_board
- layout of ChArUco board._charucoIds
- list of identifiers for each corner in charucoCorners per frame.- Returns:
- bool value, 1 (true) if detected corners form a line, 0 (false) if they do not. solvePnP, calibration functions will fail if the corners are collinear (true). The number of ids in charucoIDs should be <= the number of chessboard corners in the board. This functions checks whether the charuco corners are on a straight line (returns true, if so), or not (false). Axis parallel, as well as diagonal and other straight lines detected. Degenerate cases: for number of charucoIDs <= 2, the function returns true.
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getPredefinedDictionary
public static Dictionary getPredefinedDictionary(int dict)
Returns one of the predefined dictionaries referenced by DICT_*.- Parameters:
dict
- automatically generated- Returns:
- automatically generated
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custom_dictionary
public static Dictionary custom_dictionary(int nMarkers, int markerSize, int randomSeed)
SEE: generateCustomDictionary- Parameters:
nMarkers
- automatically generatedmarkerSize
- automatically generatedrandomSeed
- automatically generated- Returns:
- automatically generated
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custom_dictionary
public static Dictionary custom_dictionary(int nMarkers, int markerSize)
SEE: generateCustomDictionary- Parameters:
nMarkers
- automatically generatedmarkerSize
- automatically generated- Returns:
- automatically generated
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custom_dictionary_from
public static Dictionary custom_dictionary_from(int nMarkers, int markerSize, Dictionary baseDictionary, int randomSeed)
Generates a new customizable marker dictionary- Parameters:
nMarkers
- number of markers in the dictionarymarkerSize
- number of bits per dimension of each markersbaseDictionary
- Include the markers in this dictionary at the beginning (optional)randomSeed
- a user supplied seed for theRNG() This function creates a new dictionary composed by nMarkers markers and each markers composed by markerSize x markerSize bits. If baseDictionary is provided, its markers are directly included and the rest are generated based on them. If the size of baseDictionary is higher than nMarkers, only the first nMarkers in baseDictionary are taken and no new marker is added.- Returns:
- automatically generated
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custom_dictionary_from
public static Dictionary custom_dictionary_from(int nMarkers, int markerSize, Dictionary baseDictionary)
Generates a new customizable marker dictionary- Parameters:
nMarkers
- number of markers in the dictionarymarkerSize
- number of bits per dimension of each markersbaseDictionary
- Include the markers in this dictionary at the beginning (optional) This function creates a new dictionary composed by nMarkers markers and each markers composed by markerSize x markerSize bits. If baseDictionary is provided, its markers are directly included and the rest are generated based on them. If the size of baseDictionary is higher than nMarkers, only the first nMarkers in baseDictionary are taken and no new marker is added.- Returns:
- automatically generated
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