从重定向人体运动的类人全身运动优化

Waldez Gomes, Vishnu Radhakrishnan, Luigi Penco, Valerio Modugno, Jean-Baptiste Mouret, S. Ivaldi
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引用次数: 7

摘要

运动重定向和远程操作是向人形机器人演示复杂全身运动的有力工具:从某种意义上说,它们相当于对操纵者的动觉教学。然而,对于机器人来说,重定向运动可能不是最佳的:由于不同的运动学和动力学,可能有其他机器人轨迹更有效地执行相同的任务,例如更少的功耗。我们建议使用重定向轨迹来引导一个旨在优化全身轨迹的学习过程,而不是指定的成本函数。为了确保优化后的运动是安全的,即它们不违反系统约束,我们使用约束优化算法。我们比较了全局和局部优化方法,因为优化的机器人解决方案可能与演示的解决方案不接近。我们用仿人机器人iCub在物体提升场景中评估了我们的框架,最初由一名穿着运动追踪服的人类操作员演示。通过优化初始的重定向运动,我们可以将机器人的性能提高40%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Humanoid Whole-Body Movement Optimization from Retargeted Human Motions
Motion retargeting and teleoperation are powerful tools to demonstrate complex whole-body movements to humanoid robots: in a sense, they are the equivalent of kinesthetic teaching for manipulators. However, retargeted motions may not be optimal for the robot: because of different kinematics and dynamics, there could be other robot trajectories that perform the same task more efficiently, for example with less power consumption. We propose to use the retargeted trajectories to bootstrap a learning process aimed at optimizing the whole-body trajectories w.r.t. a specified cost function. To ensure that the optimized motions are safe, i.e., they do not violate system constraints, we use constrained optimization algorithms. We compare both global and local optimization approaches, since the optimized robot solution may not be close to the demonstrated one. We evaluate our framework with the humanoid robot iCub on an object lifting scenario, initially demonstrated by a human operator wearing a motion-tracking suit. By optimizing the initial retargeted movements, we can improve robot performance by over 40%.
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