Content deleted Content added
m Added an example image of the PuzzleBoard calibration pattern. |
wlnk |
||
(4 intermediate revisions by 4 users not shown) | |||
Line 1:
{{FeatureDetectionCompVisNavbox}}
==Chessboard camera calibration==
Line 128:
To solve this issue, chessboard targets can be combined with some position encoding. One popular way is to place ArUco markers<ref name=gerrido2014>S. Garrido-Jurado et al. "Automatic generation and detection of highly reliable fiducial markers under occlusion." Pattern Recognition, vol. 47(6), pp. 2280-2292. https://dl.acm.org/doi/abs/10.1016/J.PATCOG.2014.01.005. (2014).</ref> inside the lightchessboard squares. The main advantage of such ChArUco targets<ref name=opencv>OpenCV. https://docs.opencv.org/3.4/df/d4a/tutorial_charuco_detection.html.</ref> is that all light chessboard squares are uniquely coded and identifiable. This also allows to do single image multiplane calibration by placing multiple targets with different ArUco in one scene.
An alternative way for adding position encoding to chessboard patterns is the PuzzleBoard pattern:<ref name=stelldinger2024>P. Stelldinger, et al. "PuzzleBoard: A New Camera Calibration Pattern with Position Encoding." German Conference on Pattern Recognition. (2024). https://users.informatik.haw-hamburg.de/~stelldinger/pub/PuzzleBoard/. (2024).</ref>
[[File:PuzzleBoard8x11.jpg|
==See also==
Line 151:
# Z. Weixing, et al. "A fast and accurate algorithm for chessboard corner detection." 2nd International Congress on Image and Signal Processing. (2009).
# A. De la Escalera and J. Armingol. "Automatic chessboard detection for intrinsic and extrinsic camera parameter calibration." Sensors. vol. 10(3), pp. 2027–2044 (2010).
# S. Bennett and [[Joan Lasenby|J. Lasenby]]. "ChESS - quick and robust detection of chess-board features." Computer Vision and Image Understanding. vol. 118, pp. 197–210 (2014).
# J. Ha. "Automatic detection of chessboard and its applications." Opt. Eng. vol. 48(6) (2009).
# F. Zhao, et al. "An automated x-corner detection algorithm (axda)." Journal of Software. vol. 6(5), pp. 791–797 (2011).
|