Reconstruction and EMG-informed Control, Simulation and Analysis of Human Movement for Athletics: Performance Improvement and Injury Prevention
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Abstract
In this paper we present methods to track and characterize human dynamic skills using motion capture and electromographic sensing. These methods are based on task-space control to obtain the joint kinematics and extract the key physiological parameters and on computed muscle control to solve the muscle force distribution problem. We also present a dynamic control and analysis framework that integrates these metrics for the purpose of reconstructing and analyzing sports motions in real-time.
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