Autonomous vehicles rely on a variety of sensors to gather information about their surrounding. The vehicle's behavior is planned based on the environment perception, making its reliability crucial for safety reasons. The active LiDAR sensor is able to create an accurate 3D representation of a scene, making it a valuable addition for environment perception for autonomous vehicles. Due to light scattering and occlusion, the LiDAR's performance change under adverse weather conditions like fog, snow or rain. This limitation recently fostered a large body of research on approaches to alleviate the decrease in perception performance. In this survey, we gathered, analyzed, and discussed different aspects on dealing with adverse weather conditions in LiDAR-based environment perception. We address topics such as the availability of appropriate data, raw point cloud processing and denoising, robust perception algorithms and sensor fusion to mitigate adverse weather induced shortcomings. We furthermore identify the most pressing gaps in the current literature and pinpoint promising research directions.
翻译:自动驾驶车辆依赖于多种传感器来收集其周围环境的信息。车辆的行为是基于环境感知进行规划的,因此其可靠性对安全十分重要。主动式LiDAR传感器能够创建一个准确的3D场景表示,成为自动驾驶车辆环境感知的有价值补充。由于光散射和遮挡,LiDAR在雾、雪或雨等恶劣天气条件下的表现会有所下降。这种局限性最近促进了关于缓解感知性能下降的大量研究。在本调查中,我们收集、分析并讨论了在基于LiDAR的环境感知中应对恶劣天气条件的不同方面。我们涉及的主题包括适当数据的可用性、原始点云处理和去噪、强健的感知算法和传感器融合以减轻恶劣天气带来的不足。此外,我们还确定了当前文献中最紧迫的差距,并指出了有前途的研究方向。