A Weakly Supervised Vehicle Detection Method from LiDAR Point Clouds

Yiyuan Li, Yuhang Lu, Xun Huang, Siqi Shen, Cheng Wang, Chenglu Wen
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Abstract

Abstract. Training LiDAR point clouds object detectors requires a significant amount of annotated data, which is time-consuming and effort-demanding. Although weakly supervised 3D LiDAR-based methods have been proposed to reduce the annotation cost, their performance could be further improved. In this work, we propose a weakly supervised LiDAR-based point clouds vehicle detector that does not require any labels for the proposal generation stage and needs only a few labels for the refinement stage. It comprises two primary modules. The first is an unsupervised proposal generation module based on the geometry of point clouds. The second is the pseudo-label refinement module. We validate our method on two point clouds based object detection datasets, namely KITTI and ONCE, and compare it with various existing weakly supervised point clouds object detection methods. The experimental results demonstrate the method’s effectiveness with a small amount of labeled LiDAR point clouds.
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从激光雷达点云检测车辆的弱监督方法
摘要训练激光雷达点云物体探测器需要大量标注数据,耗时耗力。虽然已经提出了基于三维激光雷达的弱监督方法来降低标注成本,但其性能仍有待进一步提高。在这项工作中,我们提出了一种基于激光雷达的弱监督点云车辆检测器,该检测器在建议生成阶段不需要任何标签,在细化阶段只需要少量标签。它由两个主要模块组成。第一个是基于点云几何的无监督建议生成模块。第二个是伪标签完善模块。我们在两个基于点云的物体检测数据集(即 KITTI 和 ONCE)上验证了我们的方法,并将其与现有的各种弱监督点云物体检测方法进行了比较。实验结果表明,该方法在使用少量标注的激光雷达点云时非常有效。
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