Affiliation:
1. School of Electronic Information, Hunan First Normal University, Changsha 410205, China
2. Key Laboratory of Hunan Province for 3D Scene Visualization and Intelligence Education, Changsha 410205, China
3. Zhongwei Xinzhi (Chengdu) Technology Co., Ltd, Chengdu 610213, China
Abstract
Extrinsic parameter calibration is the foundation and prerequisite for LiDAR and camera data fusion of the autonomous system. This technology is widely used in fields such as autonomous driving, mobile robots, intelligent surveillance, and visual measurement. The learning-based method is one of the targetless calibrating methods in LiDAR and camera calibration. Due to its advantages of fast speed, high accuracy, and robustness under complex conditions, it has gradually been applied in practice from a simple theoretical model in just a few years, becoming an indispensable and important method. This paper systematically summarizes the research and development of this type of method in recent years. According to the principle of calibration parameter estimation, learning-based calibration algorithms are divided into two categories: accurate calibrating estimation and relative calibrating prediction. The evolution routes and algorithm frameworks of these two types of algorithms are elaborated, and the methods used in the algorithms’ steps are summarized. The algorithm mechanism, advantages, limitations, and applicable scenarios are discussed. Finally, we make a summary, pointing out existing research issues and trends for future development.
Funder
3D Scene Visualization and Intelligence Education Key Laboratory Foundation of Hunan Province China
Department of Education Scientific Research Foundation Hunan Provincial China
Natural Science Foundation of Hunan Province of China
Hunan Provincial Department of Natural Resources Science and Technology Foundation
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