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A Comprehensive Survey on EMG-Based Real-Time Gesture Recognition for Prosthetic Hand Applications

Authors

  • Denit D Binny

    Author
  • Diya Mathew

    Author
  • Jaice George

    Author
  • Mehak Riyas

    Author
  • Neenu R

    Author

Abstract

Electromyographic signal processing for gesture recognition represents the backbone of modern assistive technologies,
prosthetic control, and human–computer interactionsystems. However, high classification accuracy combined withcomputational efficiency i s s till a k ey c hallenge due to noise, motion artifacts, muscle cross-talk, and intersubject variability inherent in sEMG signals. Furthering prior work, this paper investigates an optimized EMG pattern recognition framework
that embeds validated preprocessing techniques, namely bandpass filtering, wavelet-based d enoising, a nd a rtifact suppression
to enhance signal quality before analysis. The system considerslightweight machine learning algorithms involving support vector
machine, K-nearest neighbors, Random Forest, and LDA togetherwith deep learning models such as CNNs and LSTM-based
recurrent networks, which have always reported state-of-the-artperformance in EMG gesture recognition. Experimental validation
on benchmark sEMG datasets evidences accuracies above97%, very well aligned with recent CNN/RNN-based literature
while keeping computational complexity as low as to fit embedded platforms. Variability analysis in terms of electrode placement,
muscle fatigue, and cross-user settings further validates the robustness and reliability of the proposed approach. The novelty
of this paper hence hinges on providing a comprehensive system framework for a reliable real-time implementation of wearable
rehabilitation platforms and devices that communicate using human-friendly gesture-based commands.

Keywords:

neural networks, gesture recognition, FPGA acceleration, wavelet analysis, attention mechanisms, edge computing
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Published

29-05-2026

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Articles

How to Cite

[1]
D. D. Binny, D. Mathew, J. George, M. Riyas, and N. R, “A Comprehensive Survey on EMG-Based Real-Time Gesture Recognition for Prosthetic Hand Applications”, IJERA, vol. 6, no. 1, pp. 247–255, May 2026, Accessed: May 30, 2026. [Online]. Available: https://ijera.in/index.php/IJERA/article/view/328

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