Deep Learning Based Facial Emotion Recognition System

Mehmet Akif Ozdemir, Berkay Elagoz, Aysegul Alaybeyoglu Soy, A. Akan
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引用次数: 4

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%.
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基于深度学习的面部情绪识别系统
本研究旨在利用深度学习方法从面部图像中识别情绪状态。在这项由伦理委员会批准的研究中,使用20名男性和20名女性参与者的视频创建了一个自定义数据集,同时模拟7种不同的面部表情(快乐、悲伤、惊讶、愤怒、厌恶、害怕和中立)。首先将获取的视频分割成图像帧,然后利用图像帧中的Haar库对人脸图像进行分割。图像预处理后获得的自定义数据集的大小超过2.5万张。利用该自定义数据集训练了模仿LeNet架构的卷积神经网络(CNN)架构。根据提出的CNN架构实验结果,训练损失为0.0115,训练准确率为99.62%,验证损失为0.0109,验证准确率为99.71%。
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