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Learning Whole-Body Motor Skills for Humanoids

机译:学习人形的全身运动技能

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This paper presents a hierarchical framework for Deep Reinforcement Learning that acquires motor skills for a variety of push recovery and balancing behaviors, i.e., ankle, hip, foot tilting, and stepping strategies. The policy is trained in a physics simulator with realistic setting of robot model and low-level impedance control that are easy to transfer the learned skills to real robots. The advantage over traditional methods is the integration of high-level planner and feedback control all in one single coherent policy network, which is generic for learning versatile balancing and recovery motions against unknown perturbations at arbitrary locations (e.g., legs, torso). Furthermore, the proposed framework allows the policy to be learned quickly by many state-of-the-art learning algorithms. By comparing our learned results to studies of preprogrammed, special-purpose controllers in the literature, self-learned skills are comparable in terms of disturbance rejection but with additional advantages of producing a wide range of adaptive, versatile and robust behaviors.
机译:本文为深度加强学习提供了分层框架,可获得各种推动恢复和平衡行为的运动技能,即脚踝,臀部,脚倾斜和踩踏策略。该政策培训了物理模拟器,具有机器人模型的现实设置和低级阻抗控制,易于将学习技能转移到真正的机器人。传统方法的优势是一体化中的高级计划者和反馈控制的集成,在一个单一的连贯策略网络中,这是用于学习多功能平衡和恢复动作的通用,用于在任意位置(例如,腿,躯干)的未知扰动。此外,所提出的框架允许通过许多最先进的学习算法快速学习策略。通过比较我们的学到对文献中的预编程,专用控制器的研究,自学习技巧在扰动排斥方面可比,但具有生产各种适应性,多功能和强大行为的额外优势。

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