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Terrain traversability analysis methods for unmanned ground vehicles: a survey

机译:无人机地面穿越能力分析方法:一项调查

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Motion planning for unmanned ground vehicles (UCV) constitutes a domain of research where several disciplines meet, ranging from artificial intelligence and machine learning to robot perception and computer vision. In view of the plurality of related applications such as planetary exploration, search and rescue, agriculture, mining and off-road exploration, the aim of the present survey is to review the field of 3D terrain traversability analysis that is employed at a preceding stage as a means to effectively and efficiently guide the task of motion planning. We identify that in the epicenter of all related methodologies, 3D terrain information is used which is acquired from LIDAR, stereo range data, color or other sensory data and occasionally combined with static or dynamic vehicle models expressing the interaction of the vehicle with the terrain. By taxonomizing the various directions that have been explored in terrain perception and analysis, this review takes a step toward agglomerating the dispersed contributions from individual domains by elaborating on a number of key similarities as well as differences, in order to stimulate research in addressing the open challenges and inspire future developments.
机译:无人机地面运动计划(UCV)构成了一个研究领域,涉及多个学科,从人工智能和机器学习到机器人感知和计算机视觉。鉴于行星勘探,搜索与救援,农业,采矿和越野勘探等多种相关应用,本次调查的目的是回顾在前一阶段采用的3D地形可穿越性分析领域,一种有效,高效地指导运动计划任务的方法。我们发现,在所有相关方法的震中,都使用了3D地形信息,该信息是从LIDAR,立体距离数据,颜色或其他感官数据获取的,偶尔会与表示车辆与地形相互作用的静态或动态车辆模型结合使用。通过对在地形感知和分析中探索的各个方向进行分类,本综述迈出了一步,通过详细阐述一些关键的相似点和不同点,将各个领域的分散贡献聚集在一起,以促进在解决开放性问题方面的研究。挑战并激发未来的发展。

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