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Virtual-to-real deep reinforcement learning: Continuous control of mobile robots for mapless navigation

机译:虚拟到真实的深度强化学习:连续控制移动机器人进行无地图导航

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摘要

We present a learning-based mapless motion planner by taking the sparse 10-dimensional range findings and the target position with respect to the mobile robot coordinate frame as input and the continuous steering commands as output. Traditional motion planners for mobile ground robots with a laser range sensor mostly depend on the obstacle map of the navigation environment where both the highly precise laser sensor and the obstacle map building work of the environment are indispensable. We show that, through an asynchronous deep reinforcement learning method, a mapless motion planner can be trained end-to-end without any manually designed features and prior demonstrations. The trained planner can be directly applied in unseen virtual and real environments. The experiments show that the proposed mapless motion planner can navigate the nonholonomic mobile robot to the desired targets without colliding with any obstacles.
机译:通过将稀疏的10维范围发现和相对于移动机器人坐标系的目标位置作为输入,并将连续转向命令作为输出,我们提出了一种基于学习的无地图运动计划器。具有激光测距传感器的移动地面机器人的传统运动计划器主要取决于导航环境的障碍物图,而高精度的激光传感器和环境的障碍物图构建工作都是必不可少的。我们显示,通过异步深度强化学习方法,无需端部到端地训练无地图运动计划器,而无需任何手动设计的功能和先前的演示。训练有素的计划者可以直接应用于看不见的虚拟和现实环境中。实验表明,提出的无地图运动计划器可以将非完整的移动机器人导航到所需的目标,而不会遇到任何障碍。

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