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基于局部特征集成的点云深度学习网络。

Deep Neural Network for Point Sets Based on Local Feature Integration.

机构信息

School of Robotics and Engineering, Northeastern University, Shenyang 110167, China.

Queen Mary School of Engineering, Northwestern Polytechnical University, Xi'an 710060, China.

出版信息

Sensors (Basel). 2022 Apr 22;22(9):3209. doi: 10.3390/s22093209.

Abstract

The research of object classification and part segmentation is a hot topic in computer vision, robotics, and virtual reality. With the emergence of depth cameras, point clouds have become easier to collect and increasingly important because of their simple and unified structures. Recently, a considerable number of studies have been carried out about deep learning on 3D point clouds. However, data captured directly by sensors from the real-world often encounters severe incomplete sampling problems. The classical network is able to learn deep point set features efficiently, but it is not robust enough when the method suffers from the lack of point clouds. In this work, a novel and general network was proposed, whose effect does not depend on a large amount of point cloud input data. The mutual learning of neighboring points and the fusion between high and low feature layers can better promote the integration of local features so that the network can be more robust. The specific experiments were conducted on the ScanNet and Modelnet40 datasets with 84.5% and 92.8% accuracy, respectively, which proved that our model is comparable or even better than most existing methods for classification and segmentation tasks, and has good local feature integration ability. Particularly, it can still maintain 87.4% accuracy when the number of input points is further reduced to 128. The model proposed has bridged the gap between classical networks and point cloud processing.

摘要

目标分类和零件分割的研究是计算机视觉、机器人技术和虚拟现实领域的热门话题。随着深度相机的出现,由于其简单而统一的结构,点云变得更容易收集,并且越来越重要。最近,已经有相当数量的关于三维点云的深度学习研究。然而,传感器从真实世界直接捕获的数据经常遇到严重的不完全采样问题。经典网络能够有效地学习深层点集特征,但当方法受到点云缺乏的影响时,它的鲁棒性不够。在这项工作中,提出了一种新颖而通用的网络,其效果不依赖于大量的点云输入数据。相邻点的相互学习以及高低特征层之间的融合可以更好地促进局部特征的集成,从而使网络更加鲁棒。具体实验分别在 ScanNet 和 Modelnet40 数据集上进行,分类和分割任务的准确率分别达到 84.5%和 92.8%,证明了我们的模型在分类和分割任务上与大多数现有方法相当,甚至更好,并且具有良好的局部特征集成能力。特别是,当输入点的数量进一步减少到 128 时,它仍然可以保持 87.4%的准确率。所提出的模型弥补了经典网络和点云处理之间的差距。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/21ea/9102113/80879757a489/sensors-22-03209-g001.jpg

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