← Back to Resources Resource

Physiologically Constrained Musculoskeletal Neural Network for Multi-DoF Joint Kinematics Estimation from Partially Observed sEMG

Physiologically Constrained Musculoskeletal Neural Network is a M.Tech project topic for Biotechnology & Biomedical Engineering. Explore the…

Physiologically Constrained Musculoskeletal Neural Network is a M.Tech project topic for Biotechnology & Biomedical Engineering. It gives students a clear starting point for research, implementation planning, and documentation.

Physiologically Constrained Musculoskeletal Neural Network Project Details

Abstract

This study examines how to estimate kinematics of multi-degrees of freedom (DoF) joints with partially observable surface electromyography (sEMG). The difficulty lies in the limited measurement to only a subset of task-relevant muscles due to either anatomical limitations or sensor constraints. To tackle this problem, we propose the musculoskeletal neural network (MSK-NN) architecture that aims to estimate multi-DoF joint angles while simultaneously inferring activations for both the measured and unmeasured muscles. The MSK-NN architecture consists of a CNN-based muscle activation estimator and an embedded musculoskeletal forward dynamics module, making it fully differentiable. Unlike other hybrid neural frameworks which Artificial Neural Networks (ANNs) rely on to provide additional biomechanical labels, such

as muscle-tendon forces or joint torques, MSK-NN does not require supervision with respect to those internal biomechanical variables. We pose the first physics-physiology composite loss function, which consists of a joint kinematics loss, a datadriven muscle synergy loss, and an anatomy-guided trend loss. We validate our approach by estimating two-DoF wrist kinematics during rhythmic and random motion. Our approach, MSK-NN, outperformed the baselines (CNN, Bi-LSTM, CNN-LSTM, and PET) with respect to normalized root mean square error (NRMSE) and coefficient of determination (R2), especially in random motion tasks.

Reference Paper Physiologically Constrained Musculoskeletal Neural Network for Multi-DoF Joint Kinematics Estimation from Partially Observed sEMG
Domain Biotechnology & Biomedical Engineering
Sub-Domain Biomedical Devices / Tissue Engineering / Bioreactor Design
PDF Download Download / View PDF
Get Help Get Help on WhatsApp

Message: Hi FE, I need help with “Physiologically Constrained Musculoskeletal Neural Network for Multi-DoF Joint Kinematics Estimation from Partially Observed sEMG” in “Biotechnology & Biomedical Engineering”

How to Use This Physiologically Constrained Musculoskeletal Neural Network Topic

This resource helps students understand the project idea, reference paper direction, and next step for implementation. Moreover, students can compare this Physiologically Constrained Musculoskeletal Neural Network topic with related M.Tech project topics.

Additionally, the topic can support synopsis preparation, report writing, and academic documentation. Therefore, students should review the linked reference paper first. For more branches and sub-domains, explore the complete Fried Engineers resource library.

Need help with this resource?

Share your academic level, branch, topic, and requirement. Fried Engineers will guide you with the right next step.

Send Requirement