Robust multi-view reconstruction from quasi-dense point cloud and poisson surface mesh

3DTV-Conference(2014)

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摘要
A novel method for generating a reliable initial surface mesh of the interested scene from a quasi-dense point cloud is presented in this article. Given multiple images taken from different points of view, a robust quasi-dense point cloud is acquired by accumulative triangulation of the potentially matched feature points. In our proposed method, the feature points are detected with Harris-corner and SIFT detectors. SIFT and DAISY descriptors are used to describe the neighboring environment of the detected features and provide efficient matching possibilities. The proposed method can be parallelized almost at each phase, which makes it suitable for image datasets of different sizes. The accuracy of the proposed method is evaluated quantitatively and qualitatively on different types and sizes of image datasets.
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关键词
sift detector,stochastic processes,poisson surface mesh,poisson surface,quasidense point cloud,daisy,feature detection,computational geometry,daisy descriptor,image reconstruction,accumulative triangulation,multiview stereo reconstruction,robust multiview reconstruction,image datasets,sift descriptor,harris-corner detector,sift,quasi-dense point cloud,vectors,harris corner detector,robustness,feature extraction,surface reconstruction
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