Many recent works show that a spatial manipulation module could boost the performances of deep neural networks (DNNs) for 3D point cloud analysis. In this paper, we aim to provide an insight into spatial manipulation modules. Firstly, we find that the smaller the rotational degree of freedom (RDF) of objects is, the more easily these objects are handled by these DNNs. Then, we investigate the effect of the popular T-Net module and find that it could not reduce the RDF of objects. Motivated by the above two issues, we propose a rotation transformation network for point cloud analysis, called RTN, which could reduce the RDF of input 3D objects to 0. The RTN could be seamlessly inserted into many existing DNNs for point cloud analysis. Extensive experimental results on 3D point cloud classification and segmentation tasks demonstrate that the proposed RTN could improve the performances of several state-of-the-art methods significantly.
翻译:最近许多工作都表明,空间操纵模块可以提高3D点云分析的深神经网络的性能。 在本文中,我们的目标是提供空间操纵模块的洞察力。 首先,我们发现物体自由旋转度越小,这些天体就越容易由这些天体处理。 然后,我们调查广受欢迎的T-Net模块的影响,发现它无法减少天体的RDF。受上述两个问题的影响,我们建议了点云分析的旋转转换网络,称为RTN, 它可以将输入的3D对象的RDF减少到0。 RTN可以无缝地插入现有的许多DNNS, 用于点云分析。 3D点云分类和分区任务的广泛实验结果表明,拟议的RTN可以显著改善若干最先进的方法的性能。