Monitoring of human neuromusculoskeletal system performance through model-based fusion of electromyogram signals and kinematic/dynamic variables

This article demonstrates feasibility of utilizing model-based approach for monitoring the performance of human neuromusculoskeletal systems. The performance monitoring method utilizes an autoregre...

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