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Vision-based behavior for UAV reactive avoidance by using a reinforcement learning method

机译:通过使用强化学习方法的无人机被动反应的基于视觉的行为

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Reactive behavior is a classic control pattern in both robotic and biological systems. Inspired by this conception, this paper focuses on the mapping from the visual sensor to the actor controller by using a reinforcement learning method. This paper proposes an actor-critic algorithm based on the RBF neural network to achieve the unmanned aerial vehicle (UAV) avoidance ability. A semi-physical experiment is implemented to verify the effectiveness of the proposed algorithm.
机译:反应行为是机器人和生物系统中的经典控制模式。受此概念的启发,本文重点研究了通过强化学习方法从视觉传感器到角色控制器的映射。提出了一种基于RBF神经网络的actor-critic算法,以实现无人机回避能力。进行了半物理实验,验证了所提算法的有效性。

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