Augmented Vector Field Navigation Cost Mapping using Inertial Sensors

Felipe G. Oliveira, A. A. Neto, P. Borges, M. Campos, D. Macharet
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引用次数: 3

Abstract

In outdoor field robotics, considering the environmental characteristics is key to improving the efficiency of autonomous navigation. In this context, identifying rough terrain can significantly increase the reliability of operations. This paper addresses the problem of mapping the navigation cost associated with uneven outdoor terrains. We propose an augmented vector field representation obtained only with the use of inertial sensors. The map is determined considering characteristics such as roughness and slope. Experiments were carried out with different robots in real-world environments presenting different terrain characteristics to analyze the quality and efficiency of the mapping process. Results show that the obtained navigation cost maps provide a reliable indication of the ground characteristics of outdoor environments and can be used in the path planning stage.
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基于惯性传感器的增广矢量场导航成本映射
在室外野外机器人中,考虑环境特性是提高自主导航效率的关键。在这种情况下,识别崎岖地形可以显著提高作业的可靠性。本文研究了不平坦室外地形下的导航成本映射问题。我们提出了仅使用惯性传感器获得的增广向量场表示。地图是根据粗糙度和坡度等特征确定的。利用不同机器人在不同地形特征的真实环境中进行实验,分析测绘过程的质量和效率。结果表明,获得的导航成本图能够可靠地反映室外环境的地面特征,可用于路径规划阶段。
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