论文标题
POLARMIX:LIDAR点云的一般数据增强技术
PolarMix: A General Data Augmentation Technique for LiDAR Point Clouds
论文作者
论文摘要
LIDAR点云通常通过连续旋转LIDAR传感器扫描,捕获周围环境的精确几何形状,并且对于许多自动检测和导航任务至关重要。尽管已经开发了许多3D深度体系结构,但是在分析和理解点云数据中,有效收集和大量点云的注释仍然是一个主要挑战。本文介绍了Polarmix,Polarmix是一种简单且通用的点云增强技术,但可以在不同的感知任务和场景中有效地减轻数据约束。 Polarmix通过两种跨扫描增强策略来富含点云分布,并保留点云保真度,这些杂志沿扫描方向切割,编辑和混合点云。第一个是场景级交换,该交换交换了沿方位角轴切割的两个LiDAR扫描的点云扇区。第二个是实例级旋转和粘贴,它是从一个激光雷达扫描中进行的点点实例,将它们旋转多个角度(以创建多个副本),然后将旋转点实例粘贴到其他扫描中。广泛的实验表明,Polarmix在不同的感知任务和场景中始终如一地达到卓越的表现。此外,它可以用作各种3D深度体系结构的插件,并且对于无监督的域适应性也很好。
LiDAR point clouds, which are usually scanned by rotating LiDAR sensors continuously, capture precise geometry of the surrounding environment and are crucial to many autonomous detection and navigation tasks. Though many 3D deep architectures have been developed, efficient collection and annotation of large amounts of point clouds remain one major challenge in the analytic and understanding of point cloud data. This paper presents PolarMix, a point cloud augmentation technique that is simple and generic but can mitigate the data constraint effectively across different perception tasks and scenarios. PolarMix enriches point cloud distributions and preserves point cloud fidelity via two cross-scan augmentation strategies that cut, edit, and mix point clouds along the scanning direction. The first is scene-level swapping which exchanges point cloud sectors of two LiDAR scans that are cut along the azimuth axis. The second is instance-level rotation and paste which crops point instances from one LiDAR scan, rotates them by multiple angles (to create multiple copies), and paste the rotated point instances into other scans. Extensive experiments show that PolarMix achieves superior performance consistently across different perception tasks and scenarios. In addition, it can work as plug-and-play for various 3D deep architectures and also performs well for unsupervised domain adaptation.