Efficient multi-robot search for a moving target

被引:117
作者
Hollinger, Geoffrey [1 ]
Singh, Sanjiv [1 ]
Djugash, Joseph [1 ]
Kehagias, Athanasios [2 ]
机构
[1] Robotics Institute, Carnegie Mellon University, Pittsburgh
[2] Division of Mathematics, Department of Mathematics, Physics, and Computer Sciences, Aristotle University of Thessaloniki
关键词
Approximation algorithms; Autonomous search; Decentralized computation; Multi-robot coordination; POMDPs; Range-only sensing;
D O I
10.1177/0278364908099853
中图分类号
学科分类号
摘要
This paper examines the problem of locating a mobile, non-adversarial target in an indoor environment using multiple robotic searchers. One way to formulate this problem is to assume a known environment and choose searcher paths most likely to intersect with the path taken by the target. We refer to this as the multi-robot efficient search path planning (MESPP) problem. Such path planning problems are NP-hard, and optimal solutions typically scale exponentially in the number of searchers. We present an approximation algorithm that utilizes finite-horizon planning and implicit coordination to achieve linear scalability in the number of searchers. We prove that solving the MESPP problem requires maximizing a non-decreasing, submodular objective function, which leads to theoretical bounds on the performance of our approximation algorithm. We extend our analysis by considering the scenario where searchers are given noisy non-line-of-sight ranging measurements to the target. For this scenario, we derive and integrate online Bayesian measurement updating into our framework. We demonstrate the performance of our framework in two large-scale simulated environments, and we further validate our results using data from a novel ultra-wideband ranging sensor. Finally, we provide an analysis that demonstrates the relationship between MESPP and the intuitive average capture time metric. Results show that our proposed linearly scalable approximation algorithm generates searcher paths that are competitive with those generated by exponential algorithms. © SAGE Publications 2009 Los Angeles, London.
引用
收藏
页码:201 / 219
页数:18
相关论文
共 31 条
[1]  
Adler M., Racke H., Sivadasan N., Sohler C., Randomized pursuit-evasion in graphs. Combinatorics, Probability and Computing, 12, 3, pp. 225-244, (2003)
[2]  
Calisi D., Farinelli A., Locchi L., Nardi D., Multi-objective exploration and search for autonomous rescue robots, Journal of Field Robotics, 24, 8-9, pp. 763-777, (2007)
[3]  
Eaton J., Zadeh L., Optimal pursuit strategies in discrete-state probabilistic systems, Transactions of the ASME. Series D, Journal of Basic Engineering, 62, pp. 23-28, (1962)
[4]  
Ferris B., Fox D., Lawrence N., WiFi-SLAM using Gaussian process latent variable models, Proceedings of the 20th International Joint Conference on Artificial Intelligence
[5]  
Ferris B., Hahnel D., Fox D., Gaussian processes for signal strength-based location estimation, Proceedings of the 2nd Robotics Science and Systems Conference
[6]  
Furukawa T., Durrant-Whyte H., Lavis B., The element-based method-theory and its application to Bayesian search and tracking, Proceedings of the International Conference on Intelligent Robots and Systems
[7]  
Gerkey B., Thrun S., Gordon G., Parallel stochastic hill-climbing with small teams, Proceedings of the 3rd International NRL Workshop on Multi-Robot Systems
[8]  
Gerkey B., Thrun S., Gordon G., Visibility-based pursuit-evasion with limited field of view, The International Journal of Robotics Research, 25, 4, pp. 299-315, (2006)
[9]  
Gerkey B., Vaughan R., Howard A., The player/stage project: Tools for multi-robot and distributed sensor systems, Proceedings of the International Conference on Advanced Robotics
[10]  
Guestrin C., Krause A., Singh A., Near-optimal sensor placements in Gaussian processes, Proceedings of the International Conference on Machine Learning