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UAV Target Tracking in Urban Environments Using Deep Reinforcement Learning

机译:使用深度强化学习在城市环境中进行无人机目标跟踪

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Persistent target tracking in urban environments using UAV is a difficult task due to the limited field of view, visibility obstruction from obstacles and uncertain target motion. The vehicle needs to plan intelligently in 3D such that the target visibility is maximized. In this paper, we introduce Target Following DQN (TF-DQN), a deep reinforcement learning technique based on Deep Q-Networks with a curriculum training framework for the UAV to persistently track the target in the presence of obstacles and target motion uncertainty. The algorithm is evaluated through simulations. The results show that the UAV tracks the target persistently in diverse environments while avoiding obstacles on the trained environments as well as on unseen environments.
机译:由于视野有限,障碍物的可见性障碍以及不确定的目标运动,使用无人机在城市环境中进行持久的目标跟踪是一项艰巨的任务。车辆需要以3D方式进行智能规划,以使目标可见性最大化。在本文中,我们介绍了目标跟随DQN(TF-DQN),这是一种基于Deep Q网络的深度强化学习技术,具有用于无人机的课程训练框架,可以在存在障碍物和目标运动不确定性的情况下持续跟踪目标。该算法通过仿真进行评估。结果表明,无人机可以在各种环境中持续跟踪目标,同时避免在训练有素的环境以及看不见的环境中遇到障碍。

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