论文标题

使用反馈网络通过结构化特征图完成点云完成

Point cloud completion via structured feature maps using a feedback network

论文作者

Su, Zejia, Huang, Haibin, Ma, Chongyang, Huang, Hui, Hu, Ruizhen

论文摘要

在本文中,我们从特征学习的角度解决了点云完成的具有挑战性的问题。我们的主要观察结果是,要恢复基础结构以及表面细节,给定部分输入,基本组件是一个很好的特征表示,可以同时捕获全球结构和局部几何细节。因此,我们首先提出了FSNET,这是一个特征结构模块,可以通过从本地区域学习多个潜在图案来适应汇总点的点功能。然后,我们将FSNET集成到粗线管道中,以完成点云完成。具体而言,采用2D卷积神经网络将特征图从FSNET解码为粗且完整的点云。接下来,使用一个点云UP抽样网络来从部分输入和粗大的中间输出中生成密集的点云。为了有效利用局部结构并增强点分布均匀性,我们提出了IFNET,这是一个使用自校正机制的点提升模块,该模块可以逐步完善生成的密集点云的细节。我们已经在Shapenet,MVP和Kitti数据集上进行了定性和定量实验,这些实验表明我们的方法表现优于最先进的点云完成方法。

In this paper, we tackle the challenging problem of point cloud completion from the perspective of feature learning. Our key observation is that to recover the underlying structures as well as surface details, given partial input, a fundamental component is a good feature representation that can capture both global structure and local geometric details. We accordingly first propose FSNet, a feature structuring module that can adaptively aggregate point-wise features into a 2D structured feature map by learning multiple latent patterns from local regions. We then integrate FSNet into a coarse-tofine pipeline for point cloud completion. Specifically, a 2D convolutional neural network is adopted to decode feature maps from FSNet into a coarse and complete point cloud. Next, a point cloud upsampling network is used to generate a dense point cloud from the partial input and the coarse intermediate output. To efficiently exploit local structures and enhance point distribution uniformity, we propose IFNet, a point upsampling module with a self-correction mechanism that can progressively refine details of the generated dense point cloud. We have conducted qualitative and quantitative experiments on ShapeNet, MVP, and KITTI datasets, which demonstrate that our method outperforms state-of-theart point cloud completion approaches.

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