A survey on multi-sensor fusion based obstacle detection for intelligent ground vehicles in off-road environments

被引:0
|
作者
Jin-wen Hu
Bo-yin Zheng
Ce Wang
Chun-hui Zhao
Xiao-lei Hou
Quan Pan
Zhao Xu
机构
[1] Northwestern Polytechnical University,Key Laboratory of Information Fusion Technology
关键词
Multi-sensor fusion; Obstacle detection; Off-road environment; Intelligent vehicle; Unmanned ground vehicle; TP242.6;
D O I
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中图分类号
学科分类号
摘要
With the development of sensor fusion technologies, there has been a lot of research on intelligent ground vehicles, where obstacle detection is one of the key aspects of vehicle driving. Obstacle detection is a complicated task, which involves the diversity of obstacles, sensor characteristics, and environmental conditions. While the on-road driver assistance system or autonomous driving system has been well researched, the methods developed for the structured road of city scenes may fail in an off-road environment because of its uncertainty and diversity. A single type of sensor finds it hard to satisfy the needs of obstacle detection because of the sensing limitations in range, signal features, and working conditions of detection, and this motivates researchers and engineers to develop multi–sensor fusion and system integration methodology. This survey aims at summarizing the main considerations for the onboard multi-sensor configuration of intelligent ground vehicles in the off-road environments and providing users with a guideline for selecting sensors based on their performance requirements and application environments. State-of-the-art multi-sensor fusion methods and system prototypes are reviewed and associated to the corresponding heterogeneous sensor configurations. Finally, emerging technologies and challenges are discussed for future study.
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页码:675 / 692
页数:17
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