An epipolar-constrained prior for efficient search in multi-view scenarios

Signal Processing Conference(2014)

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摘要
In this paper we propose a novel framework for fast exploitation of multi-view cues with applicability in different image processing problems. In order to bring our proposed framework into practice, an epipolar-constrained prior is presented, onto which a random search algorithm is proposed to find good matches among the different views of the same scene. This algorithm includes a generalization of the local coherency in 2D images for multi-view wide-baseline cases. Experimental results show that the geometrical constraint allows a faster initial convergence when finding good matches. We present some applications of the proposed framework on classical image processing problems.
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关键词
image processing,2D images,approximate nearest neighbor,deblurring,epipolar line,epipolar-constrained prior,image processing,random search algorithm,super resolution,Super resolution,approximate nearest neighbor,deblurring,epipolar line
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