Recognition of the emotions demonstrated by human beings plays a crucial role in healthcare and human-machine interface. This paper reports an attempt to classify emotions using a spectral feature from facial electromyography (facial EMG) signals in the valence affective dimension. For this purpose, the facial EMG signals are obtained from the DEAP dataset. The signals are subjected to Short-Time Fourier Transform, and the peak frequency values are extracted from the signal in intervals of one second. Support vector machine (SVM) classifier is used for the classification of the features extracted. The extracted feature can classify the signals in the valence dimension with an accuracy of 61.37%. The proposed feature could be used as an added feature for emotion recognition, and this method of analysis could be extended to myoelectric control applications. © 2021 European Federation for Medical Informatics (EFMI) and IOS Press.
CITATION STYLE
Shiva, J., Makaram, N., Karthick, P. A., & Swaminathan, R. (2021). Emotion recognition using spectral feature from facial electromygraphy signals for human-machine interface. In Public Health and Informatics: Proceedings of MIE 2021 (pp. 486–487). IOS Press. https://doi.org/10.3233/SHTI210207
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