A Compact Surface EMG Dataset for Hand Gesture Recognition Utilizing a Minimal Channel Configuration on Forearm Muscles

Published: 28 March 2025| Version 1 | DOI: 10.17632/mc8t88b7p9.1
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Description

The presented dataset includes electromyography (EMG) signals acquired by performing a set of gestures for the purpose of hand gesture recognition and human-computer interaction. The data comprises 3-channel surface electromyography signals captured from 5 healthy participants while performing 14 different hand gestures; each gesture was performed 15 times per participant. The data collection process involved placing three sEMG sensors on three key forearm muscles; the raw 3.5s signals were acquired with a sampling rate of 1 kHz and stored in a .csv format, providing easy accessibility and visualization. This dataset can be employed with artificial intelligence models in hand gesture classification, human-computer interaction (HCI), biomedical signal processing, and prosthetic hand control and rehabilitation, as well as validating machine learning models created with other datasets.

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Institutions

  • University of Technology

Categories

Artificial Intelligence, Signal Processing, Biomedical Engineering, Machine Learning, Hand, Electromyography, Gesture Recognition

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