从最小人机交互优化自主监控路径解决方案

Christopher M. Reardon, Fei Han, Hao Zhang, Jonathan R. Fink
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引用次数: 1

摘要

资源受限的监视任务代表了自主机器人系统在各种实际应用中的一个有前途的领域。特别是,我们考虑的任务中,系统必须在遍历受资源约束的环境时最大化检测目标的概率,这使得完全覆盖是不可行的。为了表现良好,准确了解监视目标的潜在分布对于实际应用至关重要,但这通常不适用于机器人。为了成功地解决人机团队监控路线规划问题,人机交互的设计和优化至关重要。此外,在人机合作中,人类通常拥有任务、环境或其他代理的基本知识。在本文中,我们介绍了一种名为人机自主路径规划(HARP)的新方法,该方法探索了监控解决方案的空间,以利用通过与人类交互提供的信息最大化任务性能。实验结果表明,通过最小的交互,我们可以成功地利用人类知识在资源限制下创建更成功的监视路线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing autonomous surveillance route solutions from minimal human-robot interaction
Resource-constrained surveillance tasks represent a promising domain for autonomous robotic systems in a variety of real-world applications. In particular, we consider tasks where the system must maximize the probability of detecting a target while traversing an environment subject to resource constraints that make full coverage infeasible. In order to perform well, accurate knowledge of the underlying distribution of the surveillance targets is essential for practical use, but this is typically not available to robots. To successfully address surveillance route planning in human-robot teams, the design and optimization of human-robot interaction is critical. Further, in human-robot teaming, the human often possesses essential knowledge of the mission, environment, or other agents. In this paper, we introduce a new approach named Human-robot Autonomous Route Planning (HARP) that explores the space of surveillance solutions to maximize task-performance using information provided through interactions with humans. Experimental results have shown that with minimal interaction, we can successfully leverage human knowledge to create more successful surveillance routes under resource constraints.
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