Fast cost-volume filtering for visual correspondence and beyond.

CVPR '11 Proceedings of the 2011 IEEE Conference on Computer Vision and Pattern Recognition(2013)

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摘要
Many computer vision tasks can be formulated as labeling problems. The desired solution is often a spatially smooth labeling where label transitions are aligned with color edges of the input image. We show that such solutions can be efficiently achieved by smoothing the label costs with a very fast edge-preserving filter. In this paper, we propose a generic and simple framework comprising three steps: 1) constructing a cost volume, 2) fast cost volume filtering, and 3) Winner-Takes-All label selection. Our main contribution is to show that with such a simple framework state-of-the-art results can be achieved for several computer vision applications. In particular, we achieve 1) disparity maps in real time whose quality exceeds those of all other fast (local) approaches on the Middlebury stereo benchmark, and 2) optical flow fields which contain very fine structures as well as large displacements. To demonstrate robustness, the few parameters of our framework are set to nearly identical values for both applications. Also, competitive results for interactive image segmentation are presented. With this work, we hope to inspire other researchers to leverage this framework to other application areas.
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关键词
computer vision,image colour analysis,image segmentation,image sequences,smoothing methods,stereo image processing,Middlebury stereo benchmark,computer vision,cost volume,disparity map,edge-preserving filter,fast cost-volume filtering,input image color edge,interactive image segmentation,label cost smoothing,label transition,labeling problem,optical flow field,robustness,spatially smooth labeling,visual correspondence,winner-takes-all label selection,Stereo matching,interactive image segmentation,optical flow
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