PCDreamer: Point Cloud Completion Through Multi-view Diffusion Priors
- URL: http://arxiv.org/abs/2411.19036v1
- Date: Thu, 28 Nov 2024 10:31:59 GMT
- Title: PCDreamer: Point Cloud Completion Through Multi-view Diffusion Priors
- Authors: Guangshun Wei, Yuan Feng, Long Ma, Chen Wang, Yuanfeng Zhou, Changjian Li,
- Abstract summary: PCDreamer is a novel method for point cloud completion.
We harness the relatively view-consistent multi-view diffusion priors within large models to generate novel views of the desired shape.
- Score: 15.744898273675757
- License:
- Abstract: This paper presents PCDreamer, a novel method for point cloud completion. Traditional methods typically extract features from partial point clouds to predict missing regions, but the large solution space often leads to unsatisfactory results. More recent approaches have started to use images as extra guidance, effectively improving performance, but obtaining paired data of images and partial point clouds is challenging in practice. To overcome these limitations, we harness the relatively view-consistent multi-view diffusion priors within large models, to generate novel views of the desired shape. The resulting image set encodes both global and local shape cues, which is especially beneficial for shape completion. To fully exploit the priors, we have designed a shape fusion module for producing an initial complete shape from multi-modality input (\ie, images and point clouds), and a follow-up shape consolidation module to obtain the final complete shape by discarding unreliable points introduced by the inconsistency from diffusion priors. Extensive experimental results demonstrate our superior performance, especially in recovering fine details.
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