论文标题

拓扑感知的3D点云生成的Chartpoint流

ChartPointFlow for Topology-Aware 3D Point Cloud Generation

论文作者

Kimura, Takumi, Matsubara, Takashi, Uehara, Kuniaki

论文摘要

点云是三维(3D)形状表面的表示。深层生成模型已被调整为通常使用来自类似球的潜在变量的地图建模其变化。但是,尽管连续地图无法表达不同数量的孔和交叉点,但以前的方法并没有太多注意点云的拓扑结构。此外,点云通常由多个子部分组成,也很难表达。在这项研究中,我们提出了ChartPointFlow,这是一个基于流量的生成模型,该模型具有3D点云的多个潜在标签。每个标签都以无监督的方式分配给点。然后,将标签上的地图分配给点云的连续子集,类似于歧管的图表。这使我们提出的模型能够以明确的边界来保留拓扑结构,而以前的方法倾向于产生模糊的点云并且无法产生孔。实验结果表明,与其他点云发电机相比,ChartPointFlow在发电和重建方面实现了最先进的性能。此外,ChartPoint Flow使用图表将对象分为语义子部分,并且在无监督分段的情况下证明了卓越的性能。

A point cloud serves as a representation of the surface of a three-dimensional (3D) shape. Deep generative models have been adapted to model their variations typically using a map from a ball-like set of latent variables. However, previous approaches did not pay much attention to the topological structure of a point cloud, despite that a continuous map cannot express the varying numbers of holes and intersections. Moreover, a point cloud is often composed of multiple subparts, and it is also difficult to express. In this study, we propose ChartPointFlow, a flow-based generative model with multiple latent labels for 3D point clouds. Each label is assigned to points in an unsupervised manner. Then, a map conditioned on a label is assigned to a continuous subset of a point cloud, similar to a chart of a manifold. This enables our proposed model to preserve the topological structure with clear boundaries, whereas previous approaches tend to generate blurry point clouds and fail to generate holes. The experimental results demonstrate that ChartPointFlow achieves state-of-the-art performance in terms of generation and reconstruction compared with other point cloud generators. Moreover, ChartPointFlow divides an object into semantic subparts using charts, and it demonstrates superior performance in case of unsupervised segmentation.

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