Optimizing evasive strategies for an evader with imperfect vision capacity
The multiagent pursuit-evasion problem has attracted considerable interest during recent years, and a general assumption is that the evader has perfect vision capacity. However, in the real world, the vision capacity of the evader is always imperfect, and it may have noisy observation within its lim...
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sg-ntu-dr.10356-1513342021-07-09T01:26:55Z Optimizing evasive strategies for an evader with imperfect vision capacity Di, Kai Yang, Shaofu Wang, Wanyuan Yan, Fuhan Xing, Haokun Jiang, Jiuchuan Jiang, Yichuan School of Computer Science and Engineering Engineering::Computer science and engineering Multiagent Pursuit-evasion Problem Imperfect Vision Capacity The multiagent pursuit-evasion problem has attracted considerable interest during recent years, and a general assumption is that the evader has perfect vision capacity. However, in the real world, the vision capacity of the evader is always imperfect, and it may have noisy observation within its limited field of view. Such an imperfect vision capacity makes the evader sense incomplete and inaccurate information from the environment, and thus, the evader will achieve suboptimal decisions. To address this challenge, we decompose this problem into two subproblems: 1) optimizing evasive strategies with a limited field of view, and 2) optimizing evasive strategies with noisy observation. For the evader with a limited field of view, we propose a memory-based ‘worst case’ algorithm, the idea of which is to store the locations of the pursuers seen before and estimate the possible region of the pursuers outside the sight of the evader. For the evader with noisy observation, we propose a value-based reinforcement learning algorithm that trains the evader offline and applies the learned strategy to the actual environment, aiming at reducing the impact of uncertainty created by inaccurate information. Furthermore, we combine and make a trade-off between the above two algorithms and propose a memory-based reinforcement learning algorithm that utilizes the estimated locations to modify the input of the state set in the reinforcement learning algorithm. Finally, we extensively evaluate our algorithms in simulation, concluding that in this imperfect vision capacity setting, our algorithms significantly improve the escape success rate of the evader. This work was supported by the National Natural Science Foundation of China (61472079, 61170164, 61807008 and 61806053), the Natural Science Foundation of Jiangsu Province of China (BK20171363, BK20180356, BK20180369, BK20170693). 2021-07-09T01:26:55Z 2021-07-09T01:26:55Z 2019 Journal Article Di, K., Yang, S., Wang, W., Yan, F., Xing, H., Jiang, J. & Jiang, Y. (2019). Optimizing evasive strategies for an evader with imperfect vision capacity. Journal of Intelligent and Robotic Systems, 96(3-4), 419-437. https://dx.doi.org/10.1007/s10846-019-00996-1 0921-0296 https://hdl.handle.net/10356/151334 10.1007/s10846-019-00996-1 2-s2.0-85061898769 3-4 96 419 437 en Journal of Intelligent and Robotic Systems © 2019 Springer Nature B.V. All rights reserved. |
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Engineering::Computer science and engineering Multiagent Pursuit-evasion Problem Imperfect Vision Capacity Di, Kai Yang, Shaofu Wang, Wanyuan Yan, Fuhan Xing, Haokun Jiang, Jiuchuan Jiang, Yichuan Optimizing evasive strategies for an evader with imperfect vision capacity |
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The multiagent pursuit-evasion problem has attracted considerable interest during recent years, and a general assumption is that the evader has perfect vision capacity. However, in the real world, the vision capacity of the evader is always imperfect, and it may have noisy observation within its limited field of view. Such an imperfect vision capacity makes the evader sense incomplete and inaccurate information from the environment, and thus, the evader will achieve suboptimal decisions. To address this challenge, we decompose this problem into two subproblems: 1) optimizing evasive strategies with a limited field of view, and 2) optimizing evasive strategies with noisy observation. For the evader with a limited field of view, we propose a memory-based ‘worst case’ algorithm, the idea of which is to store the locations of the pursuers seen before and estimate the possible region of the pursuers outside the sight of the evader. For the evader with noisy observation, we propose a value-based reinforcement learning algorithm that trains the evader offline and applies the learned strategy to the actual environment, aiming at reducing the impact of uncertainty created by inaccurate information. Furthermore, we combine and make a trade-off between the above two algorithms and propose a memory-based reinforcement learning algorithm that utilizes the estimated locations to modify the input of the state set in the reinforcement learning algorithm. Finally, we extensively evaluate our algorithms in simulation, concluding that in this imperfect vision capacity setting, our algorithms significantly improve the escape success rate of the evader. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Di, Kai Yang, Shaofu Wang, Wanyuan Yan, Fuhan Xing, Haokun Jiang, Jiuchuan Jiang, Yichuan |
format |
Article |
author |
Di, Kai Yang, Shaofu Wang, Wanyuan Yan, Fuhan Xing, Haokun Jiang, Jiuchuan Jiang, Yichuan |
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Di, Kai |
title |
Optimizing evasive strategies for an evader with imperfect vision capacity |
title_short |
Optimizing evasive strategies for an evader with imperfect vision capacity |
title_full |
Optimizing evasive strategies for an evader with imperfect vision capacity |
title_fullStr |
Optimizing evasive strategies for an evader with imperfect vision capacity |
title_full_unstemmed |
Optimizing evasive strategies for an evader with imperfect vision capacity |
title_sort |
optimizing evasive strategies for an evader with imperfect vision capacity |
publishDate |
2021 |
url |
https://hdl.handle.net/10356/151334 |
_version_ |
1705151338009067520 |