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LU Pei-yuan, WANG Jian-zhong, LUO Tao. An improved seed growth method for accurate stereo matching in disparity space[J]. JOURNAL OF BEIJING INSTITUTE OF TECHNOLOGY, 2012, 21(1): 35-40.
Citation: LU Pei-yuan, WANG Jian-zhong, LUO Tao. An improved seed growth method for accurate stereo matching in disparity space[J].JOURNAL OF BEIJING INSTITUTE OF TECHNOLOGY, 2012, 21(1): 35-40.

An improved seed growth method for accurate stereo matching in disparity space

  • Received Date:2011-01-19
  • Matching is a classical problem in stereo vision. To solve the matching problem that components cannot continue growing on the occlusions region and repetitive patterns, an improved seed growth method is proposed. The method obtains a set of interesting points defined as initial seeds from a rectified image. Through global optimization the seeds and their neighbors can be selected into a match table. Finally the components grow with the matching points and create a semi-dense map under the maximum similar subset according to the principle of the unique constraint. Experimental results show that the proposed method in the grown process can rectify some errors in matching. The semi-dense map has a good performance in the occlusions region and repetitive patterns. This algorithm is faster and more accurate than the traditional seed growing method.
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  • [1]
    Touzene N B, Larabi S. Obstacle detection from uncalibrated cameras //Panhellenic Conference on Informatics. Samos: IEEE Press, 2008: 152-156.
    [2]
    Otto G P, Chau T K W. "Region-growing" algorithm for matching of terrain images [J]. IEEE Image and Vision Computing, 1989, 7(2):83-94.
    [3]
    O’Neill M A, Denos M I. Practical approach to the stereo matching of urban imagery [J]. IEEE Image and Vision Computing, 1992, 10(2):89-98.
    [4]
    Kim T, Muller J. Automated urban area building extraction from high resolution stereo imagery[J]. IEEE Image and Vision Computing, 1996, 14(2):115-130.
    [5]
    Maxime Lhuillier, Long Quan. Match propagation for image-based modeling and rendering[J]. IEEE Pattern Analysis and Machine Intelligence, 2002, 24(8):1140-1146.
    [6]
    Qian Chen, Geard Medioni. A volumetric stereo matching method: Application to image-based modeling //Computer Vision and Pattern Recognition. Fort Collins: IEEE Press, 1999: 1029-1034.
    [7]
    Andrea Fusiello, Luca Irsara. Quasi-euclidean uncalibrated epipolar rectification //International Conference on Pattern Recognition. Tampa: IEEE Press, 2008:1-4.
    [8]
    Harris C, Stephens M. A combined corner and edge detector //Proceedings of The Fourth Alvey Vision Conference. Manchester: IEEE Press, 1988:147-151.
    [9]
    Jan Cech, Radim Sara. Efficient sampling of disparity space for fast and accurate matching //Computer Vision and Pattern Recognition. Minneapolis, MN: IEEE Press, 2007:1-8.
    [10]
    Lewis J P. Fast normalized cross-correlation //Vision Interface. Florida: Canadian Image Processing and Pattern Recognition Society, 1995: 120-123.
    [11]
    Šára R. Finding the largest unambiguous component of stereo matching //Proceedings of the 7th European Conference on Computer Vision-Part III. London: Springer, 2002: 900-914.
    [12]
    Šára R. Robust correspondence recognition for computer vision //Proceedings in Computational Statistics. London: Springer, 2006:119-131.
    [13]
    Hans Moravec. Towards automatic visual obstacle avoidance //Proceedings of the 5th International Joint Conference on Artificial Intelligence. San Francisco: Morgan Kaufmann, 1977:584.
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