通过基于课程的强化学习掌握肌肉骨骼技能。

IF 14.7 1区 医学 Q1 NEUROSCIENCES
Alberto Silvio Chiappa, Pablo Tano, Nisheet Patel, Abigaïl Ingster, Alexandre Pouget, Alexander Mathis
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引用次数: 0

摘要

高效的肌肉骨骼模拟器和强大的学习算法为解决理解生物运动控制这一巨大挑战提供了计算工具。在首届 NeurIPS MyoChallenge 中,我们的获胜方案采用了一种反映人类技能学习的方法。利用新颖的课程学习方法,我们训练了一个递归神经网络,以控制一个有 39 块肌肉的真实人手模型旋转手掌中的两个保定球。与人类受试者的数据一致,该策略发现了少量的运动协同作用,尽管它并不明确地偏向于低维解决方案。然而,通过选择性地使部分控制信号失活,我们发现对任务性能的贡献比传统协同分析所显示的维度要多。总之,我们的工作说明了在肌肉骨骼物理引擎、强化学习和神经科学的交界处出现的可能性,以促进我们对生物运动控制的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Acquiring musculoskeletal skills with curriculum-based reinforcement learning.

Efficient musculoskeletal simulators and powerful learning algorithms provide computational tools to tackle the grand challenge of understanding biological motor control. Our winning solution for the inaugural NeurIPS MyoChallenge leverages an approach mirroring human skill learning. Using a novel curriculum learning approach, we trained a recurrent neural network to control a realistic model of the human hand with 39 muscles to rotate two Baoding balls in the palm of the hand. In agreement with data from human subjects, the policy uncovers a small number of kinematic synergies, even though it is not explicitly biased toward low-dimensional solutions. However, selectively inactivating parts of the control signal, we found that more dimensions contribute to the task performance than suggested by traditional synergy analysis. Overall, our work illustrates the emerging possibilities at the interface of musculoskeletal physics engines, reinforcement learning, and neuroscience to advance our understanding of biological motor control.

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来源期刊
Neuron
Neuron 医学-神经科学
CiteScore
24.50
自引率
3.10%
发文量
382
审稿时长
1 months
期刊介绍: Established as a highly influential journal in neuroscience, Neuron is widely relied upon in the field. The editors adopt interdisciplinary strategies, integrating biophysical, cellular, developmental, and molecular approaches alongside a systems approach to sensory, motor, and higher-order cognitive functions. Serving as a premier intellectual forum, Neuron holds a prominent position in the entire neuroscience community.
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