In recent years, Convolutional Neural Networks (CNN) have proven to be efficient analysis tools for processing point clouds, e.g., for reconstruction, segmentation and classification. In this paper, we focus on the classification of edges in point clouds, where both edges and their surrounding are described. We propose a new parameterization adding to each point a set of differential information on its surrounding shape reconstructed at different scales. These parameters, stored in a Scale-Space Matrix (SSM), provide a well suited information from which an adequate neural network can learn the description of edges and use it to efficiently detect them in acquired point clouds. After successfully applying a multi-scale CNN on SSMs for the efficient classification of edges and their neighborhood, we propose a new lightweight neural network architecture outperforming the CNN in learning time, processing time and classification capabilities. Our architecture is compact, requires small learning sets, is very fast to train and classifies millions of points in seconds.
翻译:近年来,革命神经网络(CNN)被证明是处理点云的有效分析工具,例如用于重建、分割和分类。在本文件中,我们侧重于点云边缘的分类,对两边及其周围进行描述。我们建议在每个点增加一个新的参数,增加一套关于在不同尺度重建的周围形状的差异信息。这些存储在规模空间矩阵(SSSM)中的参数,提供了非常合适的信息,使一个适当的神经网络能够从中学习边缘描述,并利用它有效地在获得的点云中探测这些边缘。在成功应用了一部关于点云边缘及其周围的多级CNN之后,我们提出了一个新的轻度神经网络结构,在学习时间、处理时间和分类能力方面超过了CNN。我们的结构很紧凑,需要小的学习组合,非常快,可以在几秒钟内培训和分解数百万个点。