Complex Non-rigid 3D Shape Recovery Using a Procrustean Normal Distribution Mixture Model

被引:0
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作者
Jungchan Cho
Minsik Lee
Songhwai Oh
机构
[1] Seoul National University,Department of Electrical and Computer Engineering and ASRI
[2] Hanyang University,Division of Electrical Engineering
来源
关键词
3D reconstruction; Shape analysis; Non-rigid structure from motion; Non-rigid shape recovery;
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学科分类号
摘要
Recovering the 3D shape of a non-rigid object is a challenging problem. Existing methods make the low-rank assumption and do not scale well with the increased degree of freedom found in complex non-rigid deformations or shape variations. Moreover, in general, the degree of freedom of deformation is assumed to be known in advance, which limits the applicability of non-rigid structure from motion algorithms in a practical situation. In this paper, we propose a method for handling complex shape variations based on the assumption that complex shape variations can be represented probabilistically by a mixture of primitive shape variations. The proposed model is a generative probabilistic model, called a Procrustean normal distribution mixture model, which can model complex shape variations without rank constraints. Experimental results show that the proposed method significantly outperforms existing methods.
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页码:226 / 246
页数:20
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