论文标题

Point Cloud完成的原型意见异构任务

Prototype-Aware Heterogeneous Task for Point Cloud Completion

论文作者

Tang, Junshu, Xu, Jiachen, Gong, Jingyu, Song, Haichuan, Xie, Yuan, Ma, Lizhuang

论文摘要

旨在从部分点云中恢复原始形状信息的Point Cloud完成,引起了人们对3D Vision社区的关注。现有方法通常成功完成标准形状,同时未能生成某些非标准形状的点云的本地详细信息。为了获得理想的当地细节,全球形状信息的指导至关重要。在这项工作中,我们设计了一种有效的方法来借助类内部形状的原型表示来区分标准/非标准形状,可以通过建议的监督形状聚类借口任务来计算,从而导致异构组件W.R.T完成网络。代表性的原型(定义为形状类别的特征质心)可以提供全局形状的指导,该指南被称为软性感知之前,以多规模的方式将所需的选择性感知特征融合模块注入下游完成网络。此外,要进行有效的培训,我们考虑了基于困难的采样策略,以鼓励网络更多地关注一些部分点云,而几何信息较少。实验结果表明,我们的方法的表现优于其他最先进的方法,并且具有完成复杂几何形状的强大能力。

Point cloud completion, which aims at recovering original shape information from partial point clouds, has attracted attention on 3D vision community. Existing methods usually succeed in completion for standard shape, while failing to generate local details of point clouds for some non-standard shapes. To achieve desirable local details, guidance from global shape information is of critical importance. In this work, we design an effective way to distinguish standard/non-standard shapes with the help of intra-class shape prototypical representation, which can be calculated by the proposed supervised shape clustering pretext task, resulting in a heterogeneous component w.r.t completion network. The representative prototype, defined as feature centroid of shape categories, can provide global shape guidance, which is referred to as soft-perceptual prior, to inject into downstream completion network by the desired selective perceptual feature fusion module in a multi-scale manner. Moreover, for effective training, we consider difficulty-based sampling strategy to encourage the network to pay more attention to some partial point clouds with fewer geometric information. Experimental results show that our method outperforms other state-of-the-art methods and has strong ability on completing complex geometric shapes.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源