Point Clouds Learning Using Directed Connected Graph

Zhuyang Xie, B. Peng, Junzhou Chen
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Abstract

With the development of various 3D sensors, it has become easier for humans to obtain information in the 3D world, more and more people turn their attention to the problem of point clouds understanding. At present, most of methods focus on directly extracting features from point clouds, where feature extraction is performed by Multi-Layer Perception (MLP) and fusion is by local pooling. However, they do not consider the spatial relationship within the local point sets. We propose a directed connected graph network (DCGN), which can effectively capture the spatial relationship of local point sets by constructing the directed connected graph (DCG). Specifically, in the feature learning stage, the connection directions from neighbor points to the center point are constructed for each local point set to learn the feature transferring weights from neighbor points to center point. In order to further model the spatial distribution of local point sets, we use a distance-weighted method to perform local feature fusion. Extensive experimental results demonstrate that our method can achieve competitive performance on some standard data sets.
使用有向连通图学习点云
随着各种三维传感器的发展,人类在三维世界中获取信息变得越来越容易,对点云的理解问题也越来越受到人们的关注。目前,大多数方法都是直接从点云中提取特征,其中特征提取是通过多层感知(MLP)进行的,融合是通过局部池化进行的。然而,它们没有考虑局部点集中的空间关系。提出了一种有向连通图网络(DCGN),该网络通过构造有向连通图(DCG)来有效地捕捉局部点集的空间关系。具体来说,在特征学习阶段,为每个局部点集构造邻居点到中心点的连接方向,学习邻居点到中心点的权值传递特征。为了进一步建模局部点集的空间分布,我们使用距离加权方法进行局部特征融合。大量的实验结果表明,我们的方法可以在一些标准数据集上取得具有竞争力的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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