A multi-column CNN model for emotion recognition from EEG signals

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Abstract

We present a multi-column CNN-based model for emotion recognition from EEG signals. Recently, a deep neural network is widely employed for extracting features and recognizing emotions from various biosignals including EEG signals. A decision from a single CNN-based emotion recognizing module shows improved accuracy than the conventional handcrafted feature-based modules. To further improve the accuracy of the CNN-based modules, we devise a multi-column structured model, whose decision is produced by a weighted sum of the decisions from individual recognizing modules. We apply the model to EEG signals from DEAP dataset for comparison and demonstrate the improved accuracy of our model.

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Yang, H., Han, J., & Min, K. (2019). A multi-column CNN model for emotion recognition from EEG signals. Sensors (Switzerland), 19(21). https://doi.org/10.3390/s19214736

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