Emotion Recognition Expressed on the Face By Multimodal Method using Deep Learning
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Abstract
Emotional recognition plays a vital role in the
behavioral and emotional interactions between humans. It is a
difficult task because it relies on the prediction of abstract
emotional states from multimodal input data. Emotion
recognition systems operate in three phases. A first that consists
of taking input data from the real world through sensors. Then
extract the emotional characteristics to predict the emotion. To
do this, methods are used to exaction and classification. Deep
learning methods allow recognition in different ways. In this
article, we are interested in facial expression. We proceed to the
extraction of emotional characteristics expressed on the face in
two ways by two different methods. On the one hand, we use
Gabor filters to extract textures and facial appearances for
different scales and orientations. On the other hand, we extract
movements of the face muscles namely eyes, eyebrows, nose and
mouth. Then we make an entire classification using the
convolutional neural networks (CNN) and then a decision-level
merge. The convolutional network model has been training and
validating on datasets.
