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   An Emotion Recognition Embedded System using a Lightweight Deep Learning Model  
   
نویسنده bazargani mehdi ,tahmasebi amir ,yazdchi mohammadreza ,baharlouei zahra
منبع journal of medical signals and sensors - 2023 - دوره : 13 - شماره : 4 - صفحه:272 -279
چکیده    Background: diagnosing emotional states would improve human-computer interaction (hci) systems to be more effective in practice. correlations between electroencephalography (eeg) signals and emotions have been shown in various research; therefore, eeg signal-based methods are the most accurate and informative. methods: in this study, three convolutional neural network (cnn) models, eegnet, shallowconvnet and deepconvnet, which are appropriate for processing eeg signals, are applied to diagnose emotions. we use baseline removal preprocessing to improve classification accuracy. each network is assessed in two setting ways: subject-dependent and subject-independent. we improve the selected cnn model to be lightweight and implementable on a raspberry pi processor. the emotional states are recognized for every three-second epoch of received signals on the embedded system, which can be applied in real-time usage in practice. results: average classification accuracies of 99.10% in the valence and 99.20% in the arousal for subject-dependent and 90.76% in the valence and 90.94% in the arousal for subject independent were achieved on the well-known deap dataset. conclusion: comparison of the results with the related works shows that a highly accurate and implementable model has been achieved for practice.
کلیدواژه Convolutional neural network ,electroencephalography ,embedded system ,emotion recognition
آدرس university of isfahan, faculty of engineering, department of biomedical engineering, Iran, university of isfahan, faculty of engineering, department of biomedical engineering, Iran, university of isfahan, faculty of engineering, department of biomedical engineering, Iran, isfahan university of medical sciences, medical image and signal processing research center, school of advanced technologies in medicine, Iran
پست الکترونیکی zahra.bahar@res.mui.ac.ir
 
     
   
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