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DRL Based Intelligent Joint Manipulator and Viewing Camera Control for Reaching Tasks and Environments with Obstacles and Occluders

机译:基于DRL的智能联合机械手和摄像头控制,可实现带有障碍物和遮挡物的任务和环境

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This work studies joint camera and robotic manipulator control for reaching tasks in complex environments with obstacles and occluders. We obviate the conventional challenges involved in complex perception, planning, and control modules and careful calibration for sensing and actuation and seek a solution leveraging deep reinforcement learning (DRL). Our method using DRL and deep Q-learning learns a policy for robot actuation and perception control, mapping directly raw image pixels inputs into camera motion and manipulator joint control actions outputs. We show results comparing different training approaches, and demonstrating competency for increasingly complex situations and degrees of freedom. These preliminary experiments suggest the effectiveness and robustness of the proposed approach.
机译:这项工作研究了相机和机器人机械手的联合控制,以在具有障碍物和遮挡物的复杂环境中完成任务。我们消除了复杂的感知,计划和控制模块以及对传感和驱动进行仔细校准所涉及的常规挑战,并寻求利用深度强化学习(DRL)的解决方案。我们使用DRL和深度Q学习的方法学习了机器人致动和感知控制的策略,将原始图像像素输入直接映射到摄像机运动和机械手联合控制动作输出。我们显示了比较不同训练方法的结果,并展示了在越来越复杂的情况和自由度下的能力。这些初步实验表明了该方法的有效性和鲁棒性。

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