基于2 1/2 D地形图的概率障碍物检测

G. Broten, David Mackay, J. Collier
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引用次数: 6

摘要

在非结构化环境中导航需要可靠的感知,从而产生适当的世界表示。这种表现必须包含所有类型的障碍,无论是不可逾越的障碍,还是像软土这样的移动抑制剂。传统上,可穿越性和避障都是单独的功能,每个任务都有单独的测距仪。本文提出了一种统计技术,通过分析底层的2.1 /2维地形图,确定障碍物的概率。这种集成方法消除了对多个数据源的需求,适用于来自各种来源的距离数据,包括激光测距仪和立体视觉。本文提出的障碍物检测技术已经在模拟环境和现实条件下进行了测试,实验结果表明,该技术能够准确地识别障碍物。
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Probabilistic Obstacle Detection Using 2 1/2 D Terrain Maps
Navigating unstructured environments requires reliable perception that generates an appropriate world representation. This representation must encompass all types of impediments to traversal, whether they be insurmountable obstacles, or mobility inhibitors such as soft soil. Traditionally, traversability and obstacle avoidance have represented separate capabilities with individual rangefinders dedicated to each task. This paper presents a statistical technique that, through the analysis of the underlying 21/2 D terrain map, determines the probability of an obstacle. This integrated approach eliminates the need for multiple data sources and is applicable to range data from various sources, including laser rangefinders and stereo vision. The proposed obstacle detection technique has been tested in simulated environments and under real world conditions, and these experiments revealed that it accurately identifies obstacles.
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