Abstract
Recently, user recognitionmethods to authenticate personal identity has attracted significant attention especially with increased availability of various internet of things (IoT) services through fifth-generation technology (5G) based mobile devices. The EMG signals generated inside the body with unique individual characteristics are being studied as a part of nextgeneration user recognition methods. However, there is a limitation when applying EMG signals to user recognition systems as the same operation needs to be repeated while maintaining a constant strength of muscle over time. Hence, it is necessary to conduct research on multidimensional feature transformation that includes changes in frequency features over time. In this paper, we propose a user recognition system that applies EMG signals to the short-time fourier transform (STFT), and converts the signals into EMG spectrogram images while adjusting the time-frequency resolution to extract multidimensional features. The proposed system is composed of a data pre-processing and normalization process, spectrogram image conversion process, and final classification process. The experimental results revealed that the proposed EMG spectrogram image-based user recognition system has a 95.4% accuracy performance,which is 13% higher than the EMGsignal-based system. Such a user recognition accuracy improvement was achieved by using multidimensional features, in the time-frequency domain.
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CITATION STYLE
Kim, J. M., Choi, G. H., Kim, M. G., & Pan, S. B. (2022). User Recognition System Based on Spectrogram Image Conversion Using EMG Signals. Computers, Materials and Continua, 72(1), 1213–1227. https://doi.org/10.32604/cmc.2022.025213
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