A Survey on Deep Domain Adaptation for LiDAR Perception

Larissa T. Triess, M. Dreissig, Christoph B. Rist, J. M. Zöllner
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引用次数: 43

Abstract

Scalable systems for automated driving have to reliably cope with an open-world setting. This means, the perception systems are exposed to drastic domain shifts, like changes in weather conditions, time-dependent aspects, or geographic regions. Covering all domains with annotated data is impossible because of the endless variations of domains and the time-consuming and expensive annotation process. Furthermore, fast development cycles of the system additionally introduce hardware changes, such as sensor types and vehicle setups, and the required knowledge transfer from simulation.To enable scalable automated driving, it is therefore crucial to address these domain shifts in a robust and efficient manner. Over the last years, a vast amount of different domain adaptation techniques evolved. There already exists a number of survey papers for domain adaptation on camera images, however, a survey for LiDAR perception is absent. Nevertheless, LiDAR is a vital sensor for automated driving that provides detailed 3D scans of the vehicle’s surroundings. To stimulate future research, this paper presents a comprehensive review of recent progress in domain adaptation methods and formulates interesting research questions specifically targeted towards LiDAR perception.
激光雷达感知深度域自适应研究进展
可扩展的自动驾驶系统必须可靠地应对开放环境。这意味着,感知系统暴露在剧烈的领域变化中,如天气条件、时间依赖方面或地理区域的变化。用带注释的数据覆盖所有领域是不可能的,因为领域有无穷无尽的变化,而且注释过程既耗时又昂贵。此外,系统的快速开发周期还引入了硬件变化,例如传感器类型和车辆设置,以及仿真所需的知识转移。因此,为了实现可扩展的自动驾驶,以稳健而高效的方式应对这些领域的转变至关重要。在过去的几年里,出现了大量不同的领域自适应技术。已经有一些关于相机图像的域适应的调查论文,然而,对激光雷达感知的调查是缺失的。然而,激光雷达是自动驾驶的重要传感器,它可以提供车辆周围环境的详细3D扫描。为了促进未来的研究,本文全面回顾了领域自适应方法的最新进展,并提出了针对激光雷达感知的有趣研究问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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