FORS-EMG: A Novel sEMG Dataset for Hand Gesture Recognition Across Multiple Forearm Orientations
Surface electromyography (sEMG) signals hold significant potential for gesture recognition and robust prosthetic hand development. However, sEMG signals are affected by various physiological and dynamic factors, including forearm orientation, electrode displacement, and limb position. Most existing...
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Zusammenfassung: | Surface electromyography (sEMG) signals hold significant potential for
gesture recognition and robust prosthetic hand development. However, sEMG
signals are affected by various physiological and dynamic factors, including
forearm orientation, electrode displacement, and limb position. Most existing
sEMG datasets lack these dynamic considerations. This study introduces a novel
multichannel sEMG dataset to evaluate commonly used hand gestures across three
distinct forearm orientations. The dataset was collected from nineteen
able-bodied subjects performing twelve hand gestures in three forearm
orientations--supination, rest, and pronation. Eight MFI EMG electrodes were
strategically placed at the elbow and mid-forearm to record high-quality EMG
signals. Signal quality was validated through Signal-to-Noise Ratio (SNR) and
Signal-to-Motion artifact ratio (SMR) metrics. Hand gesture classification
performance across forearm orientations was evaluated using machine learning
classifiers, including LDA, SVM, and KNN, alongside five feature extraction
methods: TDD, TSD, FTDD, AR-RMS, and SNTDF. Furthermore, deep learning models
such as 1D CNN, RNN, LSTM, and hybrid architectures were employed for a
comprehensive analysis. Notably, the LDA classifier achieved the highest F1
score of 88.58\% with the SNTDF feature set when trained on hand gesture data
of resting and tested across gesture data of all orientations. The promising
results from extensive analyses underscore the proposed dataset's potential as
a benchmark for advancing gesture recognition technologies, clinical sEMG
research, and human-computer interaction applications. The dataset is publicly
available in MATLAB format. Dataset:
\url{https://www.kaggle.com/datasets/ummerummanchaity/fors-emg-a-novel-semg-dataset} |
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DOI: | 10.48550/arxiv.2409.07484 |