Collaborative air-ground target searching in complex environments

C. Shen, Yuanzhao Zhang, Zimo Li, Fei Gao, S. Shen
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引用次数: 22

Abstract

Collaboration between heterogeneous robots can greatly improve the overall robot system by obtaining capabili­ties that each single robot is unable to achieve. In this paper, we present a collaborative robot system designed for search and rescue missions in an unknown environment with obstacles. The system consists of an aerial robot and a ground robot. An extended Kalman filter (EKF) is used for robot pose estimation, and an online trajectory generation algorithm is implemented for dynamic obstacle avoidance of the ground robot. The aerial robot first surveys an area of interests and sources a number of targets. The ground robot is then guided by the aerial robot to reach the target location while at the same time avoids obstacles along the way using a laser range finder. The system is entirely autonomous, achieves maximum efficiency and releases the human operator from all low-level types of operations. A centralized EKF is implemented with the flexibility of easily being modified into a distributed EKF.
复杂环境下空地协同目标搜索
异构机器人之间的协作可以获得单个机器人无法实现的能力,从而极大地改善整个机器人系统。在本文中,我们提出了一个协作机器人系统,设计用于搜索和救援任务在一个未知的环境和障碍。该系统由一个空中机器人和一个地面机器人组成。将扩展卡尔曼滤波(EKF)用于机器人姿态估计,实现了地面机器人动态避障的在线轨迹生成算法。空中机器人首先调查一个感兴趣的区域,并寻找一些目标。地面机器人在空中机器人的引导下到达目标位置,同时利用激光测距仪避开沿途的障碍物。该系统是完全自主的,实现了最大的效率,并将人类操作员从所有低级操作中解放出来。集中式EKF的实现具有很容易被修改为分布式EKF的灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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