Joint Affinity Propagation for Multiple View Segmentation

ICCV(2007)

引用 88|浏览31
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摘要
A joint segmentation is a simultaneous segmentation of registered 2D images and 3D points reconstructed from the multiple view images. It is fundamental in structuring the data for subsequent modeling applications. In this paper, we treat this joint segmentation as a weighted graph labeling problem. First, we construct a 3D graph for the joint 3D and 2D points using a joint similarity measure. Then, we propose a hierarchical sparse affinity propagation algorithm to automatically and jointly segment 2D images and group 3D points. Third, a semi-supervised affinity propagation algorithm is proposed to refine the automatic results with the user assistance. Finally, intensive experiments demonstrate the effectiveness of the proposed approaches.
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关键词
3d point reconstruction,optimisation,multiple view image segmentation,semisupervised affinity propagation algorithm,joint segmentation,hierarchical sparse affinity propagation algorithm,interactive strategy learning,joint similarity measure,image segmentation,joint affinity propagation,2d image registration,image reconstruction,weighted graph labeling problem,user assistance,optimization method,graph theory,image registration,unsupervised learning,affinity propagation
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