Target Search and Navigation in Heterogeneous Robot Systems with Deep Reinforcement Learning

August 01, 2023 Β· Declared Dead Β· πŸ› Machine Intelligence Research

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Authors Yun Chen, Jiaping Xiao arXiv ID 2308.00331 Category cs.RO: Robotics Cross-listed cs.AI Citations 14 Venue Machine Intelligence Research Last Checked 4 months ago
Abstract
Collaborative heterogeneous robot systems can greatly improve the efficiency of target search and navigation tasks. In this paper, we design a heterogeneous robot system consisting of a UAV and a UGV for search and rescue missions in unknown environments. The system is able to search for targets and navigate to them in a maze-like mine environment with the policies learned through deep reinforcement learning algorithms. During the training process, if two robots are trained simultaneously, the rewards related to their collaboration may not be properly obtained. Hence, we introduce a multi-stage reinforcement learning framework and a curiosity module to encourage agents to explore unvisited environments. Experiments in simulation environments show that our framework can train the heterogeneous robot system to achieve the search and navigation with unknown target locations while existing baselines may not, and accelerate the training speed.
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