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Asynchronous deep reinforcement learning for the mobile robot navigation with supervised auxiliary tasks

机译:具有监督辅助任务的移动机器人导航的异步深度强化学习

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In this paper, we present the method based on asynchronous deep reinforcement learning adapted for the mobile robot navigation with supervised auxiliary tasks. We apply the hybrid Asynchronous Advantage Actor-Critic (A3C) algorithm CPU/GPU based on TensorFlow. The mobile robot is simulated as the navigation tasks on the OpenAI-Gym-Gazebo-based environment with the collaboration with ROS Multimaster. The supervised auxiliary tasks include the depth predictions and the robot position estimation. The simulated mobile robot shows the capability to learn to navigate only the input from raw RGB-image and also perform recognition of the place on the map. We also show that the combination of all possible auxiliary tasks leads to the different learning rate.
机译:在本文中,我们提出了一种基于异步深度强化学习的方法,该方法适用于有监督辅助任务的移动机器人导航。我们应用基于TensorFlow的混合异步优势参与者关键(A3C)算法CPU / GPU。与ROS Multimaster合作,在基于OpenAI-Gym-Gazebo的环境中将移动机器人模拟为导航任务。监督的辅助任务包括深度预测和机器人位置估计。模拟的移动机器人显示了学习仅导航来自原始RGB图像的输入并执行地图上位置识别的能力。我们还表明,所有可能的辅助任务的组合会导致不同的学习率。

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