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Common Corruption Robustness of Point Cloud Detectors: Benchmark and Enhancement.

IEEE Trans Multim(2025)

University of Alberta | Meta AI

Cited 3|Views31
Abstract
Object detection through LiDAR-based point cloud has recently been important in autonomous driving. Although achieving high accuracy on public benchmarks, the state-of-the-art detectors may still go wrong and cause a heavy loss due to the widespread corruptions in the real world like rain, snow, sensor noise, etc. Nevertheless, there is a lack of a large-scale dataset covering diverse scenes and realistic corruption types with different severities to develop practical and robust point cloud detectors, which is challenging due to the heavy collection costs. To alleviate the challenge and start the first step for robust point cloud detection, we propose the physical-aware simulation methods to generate degraded point clouds under different real-world common corruptions. Then, for the first attempt, we construct a benchmark based on the physical-aware common corruptions for point cloud detectors, which contains a total of 1,122,150 examples covering 7,481 scenes, 25 common corruption types, and 6 severities. With such a novel benchmark, we conduct extensive empirical studies on 8 state-of-the-art detectors that contain 6 different detection frameworks. Thus we get several insight observations revealing the vulnerabilities of the detectors and indicating the enhancement directions. Moreover, we further study the effectiveness of existing robustness enhancement methods based on data augmentation and data denoising. The benchmark can potentially be a new platform for evaluating point cloud detectors, opening a door for developing novel robustness enhancement methods.
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Point cloud,object detection,benchmark,robustness
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要点】:本文提出了一种物理感知的模拟方法,生成了受常见现实世界干扰影响的点云数据集,并构建了首个针对点云检测器的通用干扰稳健性基准,揭示了现有检测器的脆弱性并提供了增强方向。

方法】:通过物理感知的模拟方法生成在不同现实世界常见干扰下的退化点云数据。

实验】:构建了一个包含1,122,150个示例、7,481个场景、25种常见干扰类型和6个严重级别的基准数据集,并对8种最先进的点云检测器进行了广泛研究,结果表明了检测器的脆弱性并指示了增强方向。同时,还研究了基于数据增强和数据去噪的现有稳健性增强方法的有效性。