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Detection of Static and Mobile Targets by an Autonomous Agent with Deep Q-Learning Abilities
Authors:Barouch Matzliach  Irad Ben-Gal  Evgeny Kagan
Institution:1.Department Industrial Engineering, Tel-Aviv University, 6997801 Tel Aviv, Israel;2.Laboratory for Artificial Intelligence, Machine Learning, Business and Data Analytics, Tel-Aviv University, 6997801 Tel Aviv, Israel;3.Department Industrial Engineering, Ariel University, 4076414 Ariel, Israel
Abstract:This paper addresses the problem of detecting multiple static and mobile targets by an autonomous mobile agent acting under uncertainty. It is assumed that the agent is able to detect targets at different distances and that the detection includes errors of the first and second types. The goal of the agent is to plan and follow a trajectory that results in the detection of the targets in a minimal time. The suggested solution implements the approach of deep Q-learning applied to maximize the cumulative information gain regarding the targets’ locations and minimize the trajectory length on the map with a predefined detection probability. The Q-learning process is based on a neural network that receives the agent location and current probability map and results in the preferred move of the agent. The presented procedure is compared with the previously developed techniques of sequential decision making, and it is demonstrated that the suggested novel algorithm strongly outperforms the existing methods.
Keywords:search and detection  probabilistic decision-making  autonomous agent  deep Q-learning  neural network
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