AI RESEARCH
MUSIC: Learning Muscle-Driven Dexterous Hand Control
arXiv CS.AI
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ArXi:2604.23886v1 Announce Type: cross We present a data-driven approach for physics-based, muscle-driven dexterous control that enables musculoskeletal hands to perform precise piano playing for novel pieces of music outside the reference dataset. Our approach combines high-frequency muscle-level control with low-frequency latent-space coordination in a hierarchical architecture. At the low level, general single-hand policies are trained via reinforcement learning to generate dynamic muscle-tendon activations while tracking trajectories from a large reference motion dataset.