MyoSuite:用于肌肉骨骼运动控制的丰富接触仿真套件

V. Caggiano, Huawei Wang, G. Durandau, Massimo Sartori, Vikash Kumar
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引用次数: 27

摘要

连续控制域中的具身代理在允许探索生物生物中敏捷和灵活行为的肌肉骨骼特性的任务中暴露有限。神经-肌肉-骨骼控制背后的复杂性可能给运动学习社区带来新的挑战。与此同时,解决复杂神经控制问题的智能体可以在神经康复和协作机器人等领域产生影响。人体生物力学是复杂的多关节-多致动器肌肉骨骼系统的基础。感觉-运动系统依赖于一系列丰富的感觉-接触和本体感受输入,这些输入定义和条件肌肉驱动需要在物理世界中表现出智能行为。目前的肌肉骨骼控制框架不支持肌肉骨骼系统的生理复杂性以及物理世界的交互能力。此外,它们既不能嵌入复杂和熟练的运动任务中,也不能在计算上有效和可扩展地研究大规模的学习范式。在这里,我们展示了MyoSuite——一套生理上准确的肘部、手腕和手的生物力学模型,具有物理接触能力,可以学习复杂和熟练的接触丰富的现实世界任务。我们提供各种各样的运动控制挑战:从简单的姿势控制到熟练的手-物交互,如转动钥匙,旋转笔,单手旋转两个球等。通过支持肌肉骨骼几何形状(肌腱转移)、辅助装置(外骨骼辅助)和肌肉收缩动力学(肌肉疲劳、肌肉减少症)的生理改变,我们呈现了具有时间变化的现实生活任务,从而揭示了我们任务中大多数连续控制基准所缺乏的现实非平稳条件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MyoSuite: A Contact-rich Simulation Suite for Musculoskeletal Motor Control
Embodied agents in continuous control domains have had limited exposure to tasks allowing to explore musculoskeletal properties that enable agile and nimble behaviors in biological beings. The sophistication behind neuro-musculoskeletal control can pose new challenges for the motor learning community. At the same time, agents solving complex neural control problems allow impact in fields such as neuro-rehabilitation, as well as collaborative-robotics. Human biomechanics underlies complex multi-joint-multi-actuator musculoskeletal systems. The sensory-motor system relies on a range of sensory-contact rich and proprioceptive inputs that define and condition muscle actuation required to exhibit intelligent behaviors in the physical world. Current frameworks for musculoskeletal control do not support physiological sophistication of the musculoskeletal systems along with physical world interaction capabilities. In addition, they are neither embedded in complex and skillful motor tasks nor are computationally effective and scalable to study large-scale learning paradigms. Here, we present MyoSuite -- a suite of physiologically accurate biomechanical models of elbow, wrist, and hand, with physical contact capabilities, which allow learning of complex and skillful contact-rich real-world tasks. We provide diverse motor-control challenges: from simple postural control to skilled hand-object interactions such as turning a key, twirling a pen, rotating two balls in one hand, etc. By supporting physiological alterations in musculoskeletal geometry (tendon transfer), assistive devices (exoskeleton assistance), and muscle contraction dynamics (muscle fatigue, sarcopenia), we present real-life tasks with temporal changes, thereby exposing realistic non-stationary conditions in our tasks which most continuous control benchmarks lack.
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