3D object detection is a central task for applications such as autonomous driving, in which the system needs to localize and classify surrounding traffic agents, even in the presence of adverse weather. In this paper, we address the problem of LiDAR-based 3D object detection under snowfall. Due to the difficulty of collecting and annotating training data in this setting, we propose a physically based method to simulate the effect of snowfall on real clear-weather LiDAR point clouds. Our method samples snow particles in 2D space for each LiDAR line and uses the induced geometry to modify the measurement for each LiDAR beam accordingly. Moreover, as snowfall often causes wetness on the ground, we also simulate ground wetness on LiDAR point clouds. We use our simulation to generate partially synthetic snowy LiDAR data and leverage these data for training 3D object detection models that are robust to snowfall. We conduct an extensive evaluation using several state-of-the-art 3D object detection methods and show that our simulation consistently yields significant performance gains on the real snowy STF dataset compared to clear-weather baselines and competing simulation approaches, while not sacrificing performance in clear weather. Our code is available at www.github.com/SysCV/LiDAR_snow_sim.
翻译:3D物体探测是自动驾驶等应用的中心任务,该系统需要将周围交通物剂进行本地化和分类,即使在出现不利天气的情况下也是如此。在本文件中,我们处理在降雪下以LIDAR为基础的3D物体探测问题。由于在这种环境下收集和说明培训数据的困难,我们提议了一种基于物理的方法来模拟降雪对真正清晰的天体激光雷达点云的影响。我们用多种方法为每条LIDAR线在2D空间取样雪粒,并使用诱导的几何方法来相应修改每条LIDAR光束的测量。此外,由于降雪往往造成地面湿润,我们还模拟LIDAR点云中的地面湿度。我们利用模拟来生成部分合成的LIDAR数据,并利用这些数据来训练3D物体探测模型,这种模型对降雪是坚固的。我们使用几种状态的3D天体物体探测方法进行广泛的评估,并显示我们的模拟在真实的雪层STF数据集上与清晰的天体基线和相互竞争的模拟方法不断取得显著的性能收益。