SRPCN: Structure Retrieval based Point Completion Network
- URL: http://arxiv.org/abs/2202.02669v3
- Date: Mon, 20 Mar 2023 10:19:37 GMT
- Title: SRPCN: Structure Retrieval based Point Completion Network
- Authors: Kaiyi Zhang, Ximing Yang, Yuan Wu, Cheng Jin
- Abstract summary: We propose a Structure Retrieval based Point Completion Network (SRPCN)
It first uses k-means clustering to extract structure points and disperse them into distributions, and then KL Divergence is used as a metric to find the complete structure point cloud.
Experiments show that our method can generate more authentic results and has a stronger generalization ability.
- Score: 9.456072124396231
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Given partial objects and some complete ones as references, point cloud
completion aims to recover authentic shapes. However, existing methods pay
little attention to general shapes, which leads to the poor authenticity of
completion results. Besides, the missing patterns are diverse in reality, but
existing methods can only handle fixed ones, which means a poor generalization
ability. Considering that a partial point cloud is a subset of the
corresponding complete one, we regard them as different samples of the same
distribution and propose Structure Retrieval based Point Completion Network
(SRPCN). It first uses k-means clustering to extract structure points and
disperses them into distributions, and then KL Divergence is used as a metric
to find the complete structure point cloud that best matches the input in a
database. Finally, a PCN-like decoder network is adopted to generate the final
results based on the retrieved structure point clouds. As structure plays an
important role in describing the general shape of an object and the proposed
structure retrieval method is robust to missing patterns, experiments show that
our method can generate more authentic results and has a stronger
generalization ability.
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