Visible to the public Deep Learning Based Facial Emotion Recognition System

TitleDeep Learning Based Facial Emotion Recognition System
Publication TypeConference Paper
Year of Publication2020
AuthorsOzdemir, M. A., Elagoz, B., Soy, A. Alaybeyoglu, Akan, A.
Conference Name2020 Medical Technologies Congress (TIPTEKNO)
KeywordsBrain modeling, CNN architecture, convolutional neural nets, convolutional neural network architecture, convolutional neural networks, Deep Learning, deep learning (artificial intelligence), electroencephalography, emotion recognition, emotional state recognition, face images segmentation, face recognition, facial emotion recognition system, facial expression, facial expressions, facial recognition, Haar library, Haar transforms, Human Behavior, image classification, image frames, image preprocessing, image segmentation, LeNet architecture, Metrics, neural net architecture, pubcrawl, resilience, Resiliency, Training, Two dimensional displays, Videos
Abstract

In this study, it was aimed to recognize the emotional state from facial images using the deep learning method. In the study, which was approved by the ethics committee, a custom data set was created using videos taken from 20 male and 20 female participants while simulating 7 different facial expressions (happy, sad, surprised, angry, disgusted, scared, and neutral). Firstly, obtained videos were divided into image frames, and then face images were segmented using the Haar library from image frames. The size of the custom data set obtained after the image preprocessing is more than 25 thousand images. The proposed convolutional neural network (CNN) architecture which is mimics of LeNet architecture has been trained with this custom dataset. According to the proposed CNN architecture experiment results, the training loss was found as 0.0115, the training accuracy was found as 99.62%, the validation loss was 0.0109, and the validation accuracy was 99.71%.

DOI10.1109/TIPTEKNO50054.2020.9299256
Citation Keyozdemir_deep_2020