Robotic solutions for quick disaster response are essential to ensure minimal loss of life, especially when the search area is too dangerous or too vast for human rescuers. We model this problem as an asynchronous multi-agent active-search task where each robot aims to efficiently seek objects of interest (OOIs) in an unknown environment. This formulation addresses the requirement that search missions should focus on quick recovery of OOIs rather than full coverage of the search region. Previous approaches fail to accurately model sensing uncertainty, account for occlusions due to foliage or terrain, or consider the requirement for heterogeneous search teams and robustness to hardware and communication failures. We present the Generalized Uncertainty-aware Thompson Sampling (GUTS) algorithm, which addresses these issues and is suitable for deployment on heterogeneous multi-robot systems for active search in large unstructured environments. We show through simulation experiments that GUTS consistently outperforms existing methods such as parallelized Thompson Sampling and exhaustive search, recovering all OOIs in 80% of all runs. In contrast, existing approaches recover all OOIs in less than 40% of all runs. We conduct field tests using our multi-robot system in an unstructured environment with a search area of approximately 75,000 sq. m. Our system demonstrates robustness to various failure modes, achieving full recovery of OOIs (where feasible) in every field run, and significantly outperforming our baseline.
翻译:搜索机器人广泛用于保护响应和灾害响应中的任务。然而,目前的搜索算法没有考虑通过机器人感应器执行搜索引起的不确定性,以及植被和环境中不同的过程遮挡。在这篇文章中,我们发展了一种名为广义不确定性感知 Thompson Sampling(GUTS)的新算法。该算法是在大型、未知、不规则的环境中进行多智能体主动搜索任务的异构机器人系统。GUTS通过考虑不确定性和多种类型的遮挡来改进经典 Thompson Sampling 算法,以更好地评估每个机器人的搜索行动。该算法通过模拟实验进行了广泛测试,结果表明,在众多数据集上,GUTS 的平均寻优性能优于现有算法。我们还对该算法进行了现场测试,结果表明,该算法非常适用于保护和灾难响应中的实际任务。