This article develops a novel distributed framework based on physics-informed deep learning for robust and efficient musculoskeletal modeling in nonstationary scenarios, which could simultaneously strengthen the robustness and generalization, and reduce the time cost of model training. Without loss of generality, we utilize surface electromyogram (sEMG)-based muscle forces and joint angle prediction as an example to demonstrate the proposed distributed framework. Specifically, the whole collected sEMG data are first divided into several subdomains, and then a corresponding number of physics-informed deep-learning-based local models is built using these grouped data. Finally, all the local models are integrated into a global model to obtain ...
High-density surface electromyography (HDsEMG) is a non-invasive neural interface that records the e...
Artificial Intelligence (AI) is acquiring more recognition than ever by researchers and machine lear...
EMG-based continuous wrist joint motion estimation has been identified as a promising technique with...
Data-driven methods have become increasingly more prominent for musculoskeletal modelling due to the...
Musculoskeletal models permit the determination of internal forces acting during dynamic movement, w...
Muscle force and joint kinematics estimation from surface electromyography (sEMG) are essential for ...
Objective: Current clinical biomechanics involves lengthy data acquisition and time-consuming offlin...
This paper proposes to use deep reinforcement learning for the simulation of physics-based musculosk...
To develop multi-functional human-machine interfaces that can help disabled people reconstruct lost ...
We propose a myoelectric control method based on neural data regression and musculoskeletal modeling...
Objective: Current clinical biomechanics involves lengthy data acquisition and time-consuming offlin...
This paper proposes to use deep reinforcement learning to teach a physics-based humanmusculoskeletal...
We propose a novel machine learning (ML)-driven methodology to estimate biomechanical variables of i...
Objective: Monitoring athlete internal workload exposure, including prevention of catastrophic non-c...
Neural rehabilitation is a long and complex process that patients undergo after suffering a nervous ...
High-density surface electromyography (HDsEMG) is a non-invasive neural interface that records the e...
Artificial Intelligence (AI) is acquiring more recognition than ever by researchers and machine lear...
EMG-based continuous wrist joint motion estimation has been identified as a promising technique with...
Data-driven methods have become increasingly more prominent for musculoskeletal modelling due to the...
Musculoskeletal models permit the determination of internal forces acting during dynamic movement, w...
Muscle force and joint kinematics estimation from surface electromyography (sEMG) are essential for ...
Objective: Current clinical biomechanics involves lengthy data acquisition and time-consuming offlin...
This paper proposes to use deep reinforcement learning for the simulation of physics-based musculosk...
To develop multi-functional human-machine interfaces that can help disabled people reconstruct lost ...
We propose a myoelectric control method based on neural data regression and musculoskeletal modeling...
Objective: Current clinical biomechanics involves lengthy data acquisition and time-consuming offlin...
This paper proposes to use deep reinforcement learning to teach a physics-based humanmusculoskeletal...
We propose a novel machine learning (ML)-driven methodology to estimate biomechanical variables of i...
Objective: Monitoring athlete internal workload exposure, including prevention of catastrophic non-c...
Neural rehabilitation is a long and complex process that patients undergo after suffering a nervous ...
High-density surface electromyography (HDsEMG) is a non-invasive neural interface that records the e...
Artificial Intelligence (AI) is acquiring more recognition than ever by researchers and machine lear...
EMG-based continuous wrist joint motion estimation has been identified as a promising technique with...