Beyond Motion Imitation: Is Human Motion Data Alone Sufficient to Explain Gait Control and Biomechanics?
arXiv cs.LG / 3/16/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- Motion imitation learning for gait biomechanics shows that reproducing forward kinematics alone can yield biomechanically implausible joint kinetics.
- Adding foot-ground interaction measures, such as ground reaction forces and center of pressure, to the RL reward terms improves prediction of joint moments and aligns better with inverse dynamics.
- Incorporating kinetic constraints significantly enhances the realism of both internal and external kinetics in forward walking simulations.
- The findings suggest that for biomechanics and wearable robotics, kinetics-based reward shaping is necessary to achieve physically consistent gait representations when using imitation learning.
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