SpSequenceNet: 4D点云的语义分割网络

Hanyu Shi, Guosheng Lin, Hao Wang, Tzu-Yi Hung, Zhenhua Wang
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引用次数: 61

摘要

点云在自动驾驶和机器人等许多应用中都很有用,因为它们提供了周围环境的自然3D信息。虽然对3D点云的研究非常广泛,但对4D点云(一系列连续的3D点云帧)的场景理解是一个新兴的话题,但研究还不够充分。利用4D点云(3D点云视频),机器人系统可以通过利用前一帧的时间信息来增强其鲁棒性。然而,现有的四维点云语义分割方法由于其网络结构中时空信息的丢失,导致分割精度较低。在本文中,我们提出SpSequenceNet来解决这个问题。该网络是基于三维稀疏卷积设计的。并引入了跨帧全局关注模块和跨帧局部插值模块,实现了四维点云的时空信息捕获。我们在SemanticKITTI上进行了大量的实验,在mIoU上获得了43.1%的最先进结果,比以前的最佳方法提高了1.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SpSequenceNet: Semantic Segmentation Network on 4D Point Clouds
Point clouds are useful in many applications like autonomous driving and robotics as they provide natural 3D information of the surrounding environments. While there are extensive research on 3D point clouds, scene understanding on 4D point clouds, a series of consecutive 3D point clouds frames, is an emerging topic and yet under-investigated. With 4D point clouds (3D point cloud videos), robotic systems could enhance their robustness by leveraging the temporal information from previous frames. However, the existing semantic segmentation methods on 4D point clouds suffer from low precision due to the spatial and temporal information loss in their network structures. In this paper, we propose SpSequenceNet to address this problem. The network is designed based on 3D sparse convolution. And we introduce two novel modules, a cross-frame global attention module and a cross-frame local interpolation module, to capture spatial and temporal information in 4D point clouds. We conduct extensive experiments on SemanticKITTI, and achieve the state-of-the-art result of 43.1% on mIoU, which is 1.5% higher than the previous best approach.
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