Pixels Matching in No Obvious Feature Area in Binocular Vision Based on Peripheral Feature Points

Renlong Chen,Mingjun Liu, Xueyan Gong,Jinping Li

2018 International Conference on Security, Pattern Analysis, and Cybernetics (SPAC)(2018)

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摘要
In binocular vision, the pixel matching of no obvious feature refers to the matching of pixels in the area where the gray value does not change significantly or in the area where there is no significant gradient change in the gray level. The basic idea is that the position of the matching pixels in the area with no obvious features can be determined by the peripheral feature points. First, the camera is calibrated by the chessboard calibration method, and the internal and external parameters of the camera are obtained. The distortion of the left and right images is corrected by the calibration results. Then, the SIFT algorithm is used to extract the feature points, the Euclidean distance threshold is set to determine the better matching points, and the random sample consensus (RANSAC) algorithm is used to eliminate the wrong matching points. Finally, four target matching points with the same distance and direction information are obtained, and the final target matching points are obtained by averaging the four target matching points. Experiments show that any pair of pixels in the unmarked area can be matched accurately.
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关键词
Binocular vision,pixel matching with no obvious feature area,SIFT,RANSAC,peripheral feature points
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