KinTwin: Imitation Learning with Torque and Muscle Driven Biomechanical Models Enables Precise Replication of Able-Bodied and Impaired Movement from Markerless Motion Capture
Journal:
arXiv
Published Date:
May 19, 2025
Abstract
Broader access to high-quality movement analysis could greatly benefit
movement science and rehabilitation, such as allowing more detailed
characterization of movement impairments and responses to interventions, or
even enabling early detection of new neurological conditions or fall risk.
While emerging technologies are making it easier to capture kinematics with
biomechanical models, or how joint angles change over time, inferring the
underlying physics that give rise to these movements, including ground reaction
forces, joint torques, or even muscle activations, is still challenging. Here
we explore whether imitation learning applied to a biomechanical model from a
large dataset of movements from able-bodied and impaired individuals can learn
to compute these inverse dynamics. Although imitation learning in human pose
estimation has seen great interest in recent years, our work differences in
several ways: we focus on using an accurate biomechanical model instead of
models adopted for computer vision, we test it on a dataset that contains
participants with impaired movements, we reported detailed tracking metrics
relevant for the clinical measurement of movement including joint angles and
ground contact events, and finally we apply imitation learning to a
muscle-driven neuromusculoskeletal model. We show that our imitation learning
policy, KinTwin, can accurately replicate the kinematics of a wide range of
movements, including those with assistive devices or therapist assistance, and
that it can infer clinically meaningful differences in joint torques and muscle
activations. Our work demonstrates the potential for using imitation learning
to enable high-quality movement analysis in clinical practice.