In order to retain more feature information of local areas on a point cloud, local grouping and subsampling are the necessary data structuring steps in most hierarchical deep learning models. Due to the disorder nature of the points in a point cloud, the significant time cost may be consumed when grouping and subsampling the points, which consequently results in poor scalability. This paper proposes a fast data structuring method called PSNet (Point Structuring Net). PSNet transforms the spatial features of the points and matches them to the features of local areas in a point cloud. PSNet achieves grouping and sampling at the same time while the existing methods process sampling and grouping in two separate steps (such as using FPS plus kNN). PSNet performs feature transformation pointwise while the existing methods uses the spatial relationship among the points as the reference for grouping. Thanks to these features, PSNet has two important advantages: 1) the grouping and sampling results obtained by PSNet is stable and permutation invariant; and 2) PSNet can be easily parallelized. PSNet can replace the data structuring methods in the mainstream point cloud deep learning models in a plug-and-play manner. We have conducted extensive experiments. The results show that PSNet can improve the training and reasoning speed significantly while maintaining the model accuracy.
翻译:为了在点云中保留更多局部地区的特征信息,本地分组和子抽样是大多数等级深层次学习模型中必要的数据结构步骤。由于点云中点的混乱性质,在对点子进行分组和子抽样时,可能会花费大量的时间成本,从而导致不易缩放。本文件建议采用称为PSNet(点结构网)的快速数据结构方法。PSNet转换了点的空间特征,并将其与点云中的地方特征相匹配。PSNet同时进行分组和取样,而现有方法的取样和分组分为两个不同的步骤(例如使用FPS+ kNN);PSNet在对点进行特征转换和子取样时,可能会消耗大量的时间成本。由于这些特点,PSNet具有两个重要优势:(1) PSNet获得的组合和抽样模型是稳定的,在变量中与当地区域特征相匹配;(2) PSNet可以很容易地同时进行分组和取样,同时在深度模型中,我们能够大大地改进了模型的精确度和深度分析。我们通过模型来改进了模型的深度分析。