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Mapless Navigation for Autonomous Robots: A Deep Reinforcement Learning Approach

机译:自主机器人的无地图导航:一种深度强化学习方法

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Finding a collision-free path for mobile robots is a challenging task, especially in sceneries where obstacle information is partly observed. Our work presents a decentralized collision avoidance approach based on an innovative application of deep reinforcement learning. The approach takes the spare 10-dimensional range findings and the target position in mobile robot coordinate frame as input and the continuous action commands as output. Traditional method for finding collision-free paths deeply depends on extremely precise laser sensor and the map making work of the roadblocks is inevitable. Our work shows that, using an asynchronous deep reinforcement learning method, a mapless path planer can be trained from start to finish without any manual operations. The trainer is available in other virtual environment directly. We compare a traditional method with the asynchronous method and find that our asynchronous method can decrease training time at beginning.
机译:为移动机器人寻找无碰撞路径是一项艰巨的任务,尤其是在部分观察到障碍物信息的风景中。我们的工作提出了一种基于深度强化学习的创新应用的分散式碰撞避免方法。该方法将备用的10维范围结果和移动机器人坐标系中的目标位置作为输入,并将连续动作命令作为输出。寻找无碰撞路径的传统方法深深地依赖于极其精确的激光传感器,因此路障的制图工作是不可避免的。我们的工作表明,使用异步深度强化学习方法,无需进行任何手动操作就可以从头到尾训练无地图路径规划器。该培训师可直接在其他虚拟环境中使用。我们将传统方法与异步方法进行了比较,发现我们的异步方法可以减少开始时的训练时间。

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