Non-uniform Point Cloud Upsampling via Local Manifold Distribution
Non-uniform Point Cloud Upsampling via Local Manifold Distribution
Existing learning-based point cloud upsampling methods often overlook the intrinsic data distribution charac?teristics of point clouds, leading to suboptimal results when handling sparse and non-uniform point clouds. We propose a novel approach to point cloud upsampling by imposing constraints from the perspective of manifold distributions. Leveraging the strong fitting capability of Gaussian functions, our method employs a network to iteratively optimize Gaussian components and their weights, accurately representing local manifolds. By utilizing the probabilistic distribution properties of Gaussian functions, we construct a unified statistical manifold to impose distribution constraints on the point cloud. Experimental results on multiple datasets demonstrate that our method generates higher-quality and more uniformly distributed dense point clouds when processing sparse and non-uniform inputs, outperforming state-of-the-art point cloud upsampling techniques.
Yaohui Fang、Xingce Wang
计算技术、计算机技术
Yaohui Fang,Xingce Wang.Non-uniform Point Cloud Upsampling via Local Manifold Distribution[EB/OL].(2025-04-15)[2025-07-16].https://arxiv.org/abs/2504.11701.点此复制
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