The Role of Functional Muscle Networks in Improving Hand Gesture Perception for Human-Machine Interfaces
Costanza Armanini, Tuka Alhanai, Farah E. Shamout, S. Farokh Atashzar

TL;DR
This paper introduces a novel approach using coherence-based functional muscle networks from sEMG signals to improve hand gesture recognition, reducing computational complexity and enhancing accuracy for human-machine interfaces.
Contribution
It proposes decoding muscle synchronization via functional networks instead of individual muscle activation, enabling efficient gesture perception with shallow machine learning models.
Findings
Achieved 85.1% accuracy on Ninapro database
Outperformed existing methods in accuracy and efficiency
Reduced computational requirements for gesture decoding
Abstract
Developing accurate hand gesture perception models is critical for various robotic applications, enabling effective communication between humans and machines and directly impacting neurorobotics and interactive robots. Recently, surface electromyography (sEMG) has been explored for its rich informational context and accessibility when combined with advanced machine learning approaches and wearable systems. The literature presents numerous approaches to boost performance while ensuring robustness for neurorobots using sEMG, often resulting in models requiring high processing power, large datasets, and less scalable solutions. This paper addresses this challenge by proposing the decoding of muscle synchronization rather than individual muscle activation. We study coherence-based functional muscle networks as the core of our perception model, proposing that functional synchronization…
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Taxonomy
TopicsHand Gesture Recognition Systems · Muscle activation and electromyography studies · Ergonomics and Musculoskeletal Disorders
