Surface Electromyography
Surface electromyography (sEMG) measures electrical activity in muscles via surface electrodes, primarily aiming to decode muscle activation patterns for various applications. Current research heavily focuses on improving the accuracy and robustness of sEMG-based gesture recognition and force prediction using deep learning architectures like convolutional neural networks (CNNs), recurrent neural networks (RNNs, including LSTMs and GRUs), and transformers, often coupled with techniques like attention mechanisms and feature selection. This work holds significant implications for prosthetic control, rehabilitation robotics, human-computer interaction, and clinical diagnostics by providing a non-invasive method for monitoring muscle activity and movement intent.
Papers
Long-Term Upper-Limb Prosthesis Myocontrol via High-Density sEMG and Incremental Learning
Dario Di Domenico, Nicolò Boccardo, Andrea Marinelli, Michele Canepa, Emanuele Gruppioni, Matteo Laffranchi, Raffaello Camoriano
Robustness-enhanced Myoelectric Control with GAN-based Open-set Recognition
Cheng Wang, Ziyang Feng, Pin Zhang, Manjiang Cao, Yiming Yuan, Tengfei Chang
EEG-EMG FAConformer: Frequency Aware Conv-Transformer for the fusion of EEG and EMG
ZhengXiao He, Minghong Cai, Letian Li, Siyuan Tian, Ren-Jie Dai
Spatial Adaptation Layer: Interpretable Domain Adaptation For Biosignal Sensor Array Applications
Joao Pereira, Michael Alummoottil, Dimitrios Halatsis, Dario Farina