Classification of Emotions through EEG Signals using SVM and DNN

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Abstract

Emotions are important for Humans both at work place and in their life. Emotions helps us to communicate with others, to take decisions, in understand others etc., Emotions recognition not only helps us to solve the mental illness but also are important in various application such as Brain Computer Interface , medical care and entertainment This paper mainly deals with how Emotions are Classified through EEG Signals using SVM (Support Vector machine) and DNN (Deep Neural Networks) . Applying the most appropriate algorithm to detect the emotional state of a person and play the corresponding song in the playlist. Brain signals can be collected using EEG (electroencephalography) devices.

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N*, V., & Mahalakshmi, S. (2020). Classification of Emotions through EEG Signals using SVM and DNN. International Journal of Innovative Technology and Exploring Engineering, 4(9), 206–209. https://doi.org/10.35940/ijitee.i8103.029420

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