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Title: | On learning multi-UAV policy for multi-object tracking and formation control |
Authors: | Kaushik, P. Garg, A. Jha, S.S. |
Keywords: | Active tracking Deep reinforcement learning Formation control Gazebo simulator Unmanned aerial vehicles (UAVs) |
Issue Date: | 25-Aug-2022 |
Abstract: | Autonomous navigation and formation control of multi-UAV systems poses a significant challenge for the robotic systems that operate in partially-observable, dynamic and continuous environments. This paper addresses the problem of multi-UAV formation control while cooperatively tracking a set of moving objects. The objective of the multi-UAV system is to maintain the moving objects under their joint coverage along with aligning themselves in an optimal formation for maximizing the overall area coverage. We develop a multi-agent reinforcement learning model to learn a cooperative multi-UAV policy for the multi-object tracking and formation control. We design a reward function to encode the objectives of tracking, formation and collision avoidance into the model. The proposed deep reinforcement learning based model is deployed and tested against a baseline controller using the Gazebo simulator. The result indicates that the proposed model is robust against the tracking and alignment errors outperforming the baseline model. |
URI: | http://localhost:8080/xmlui/handle/123456789/3902 |
Appears in Collections: | Year-2021 |
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