CVAILGJun 4, 2021

A Survey on Deep Domain Adaptation for LiDAR Perception

arXiv:2106.02377v277 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental contribution that fills a gap by surveying domain adaptation specifically for LiDAR perception, which is crucial for scalable automated driving systems.

The paper addresses the problem of domain shifts in LiDAR perception for automated driving, such as weather changes and hardware variations, by providing a comprehensive survey of deep domain adaptation techniques to stimulate future research in this area.

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.

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