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Deep reinforcement learning for map-less goal-driven robot navigation

机译:较低地图的目标驱动机器人导航深度加固学习

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Mobile robots that operate in real-world environments need to be able to safely navigate their surroundings. Obstacle avoidance and path planning are crucial capabilities for achieving autonomy of such systems. However, for new or dynamic environments, navigation methods that rely on an explicit map of the environment can be impractical or even impossible to use. We present a new local navigation method for steering the robot to global goals without relying on an explicit map of the environment. The proposed navigation model is trained in a deep reinforcement learning framework based on Advantage Actor–Critic method and is able to directly translate robot observations to movement commands. We evaluate and compare the proposed navigation method with standard map-based approaches on several navigation scenarios in simulation and demonstrate that our method is able to navigate the robot also without the map or when the map gets corrupted, while the standard approaches fail. We also show that our method can be directly transferred to a real robot.
机译:在真实环境中运行的移动机器人需要能够安全地浏览周围环境。避免障碍和路径规划是实现这种系统的自治的重要性。但是,对于新的或动态环境,依赖于环境的显式地图的导航方法可能是不切实际的甚至不可能使用的。我们提出了一种新的本地导航方法,用于将机器人转向到全球目标,而无需依赖于环境的显式地图。所提出的导航模型是基于优势演员 - 批评方法的深度加强学习框架培训,能够直接将机器人观测转化为移动命令。我们在仿真中的几种导航方案上评估并比较了基于标准地图的方法的建议导航方法,并证明我们的方法也能够在没有地图或地图损坏时导航机器人,而标准方法失败。我们还表明,我们的方法可以直接转移到真正的机器人。

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