Diff-MSM: Differentiable MusculoSkeletal Model for Simultaneous Identification of Human Muscle and Bone Parameters
Yingfan Zhou, Philip Sanderink, Sigurd Jager Lemming, and Cheng Fang

TL;DR
This paper introduces Diff-MSM, a differentiable musculoskeletal model that accurately identifies human muscle and bone parameters using end-to-end automatic differentiation, improving personalization for simulations and applications in health and sports science.
Contribution
The paper presents a novel differentiable musculoskeletal model enabling simultaneous identification of muscle and bone parameters without measuring internal joint torques.
Findings
Significantly improved accuracy in muscle parameter estimation.
Outperforms state-of-the-art baseline methods.
Potential applications in health monitoring and rehabilitation.
Abstract
High-fidelity personalized human musculoskeletal models are crucial for simulating realistic behavior of physically coupled human-robot interactive systems and verifying their safety-critical applications in simulations before actual deployment, such as human-robot co-transportation and rehabilitation through robotic exoskeletons. Identifying subject-specific Hill-type muscle model parameters and bone dynamic parameters is essential for a personalized musculoskeletal model, but very challenging due to the difficulty of measuring the internal biomechanical variables in vivo directly, especially the joint torques. In this paper, we propose using Differentiable MusculoSkeletal Model (Diff-MSM) to simultaneously identify its muscle and bone parameters with an end-to-end automatic differentiation technique differentiating from the measurable muscle activation, through the joint torque, to…
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