Facial Expression Recognition and Face Recognition Using a Convolutional Neural Network

Suci Dwijayanti, Rahmad Rhedo Abdillah, Hera Hikmarika, Hermawati, Zaenal Husin, B. Suprapto
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引用次数: 3

Abstract

The human face can be used in various biometrics procedures to identify an individual through face recognition or for facial expression recognition. However, not many studies have addressed the problem of face recognition along with facial expression recognition. In addition, some studies have directed more attention to finding the most suitable feature to extract and feed to a classifier. This study focused on addressing the problem using a convolutional neural network (CNN)-based method. Unlike other methods that require suitable features to be found, this study utilized raw images as the input to the CNN. A total of 16,640 images showing four facial expressions (normal, smiling, surprised, and angry) were used as input data. These data were obtained from 52 people and captured under outdoor conditions (in midday and the afternoon) using a webcam. The CNN-VGG was utilized because it is deep and fast enough for both face recognition and facial expression recognition purposes. The results showed that the VGG-f model architecture could overcome the underfitting and overfitting problems stemming from simpler CNN architectures. The testing results showed that the VGG-f model could recognize faces and facial expressions well. The average accuracies achieved in recognizing 104 faces during the day and in the afternoon were 86.5% and 90.4%, respectively. Additionally, the average accuracies achieved in recognizing the four different facial expressions of 52 people were 72% and 74% during the day and at noon, respectively. Recognition errors may have been caused by similarities between images.
基于卷积神经网络的面部表情识别和人脸识别
人脸可以用于各种生物识别程序,通过面部识别或面部表情识别来识别个人。然而,针对人脸识别和面部表情识别问题的研究并不多。此外,一些研究将更多的注意力放在寻找最合适的特征来提取和馈送给分类器上。本研究的重点是使用基于卷积神经网络(CNN)的方法来解决这个问题。与其他需要找到合适特征的方法不同,本研究使用原始图像作为CNN的输入。总共有16640张图像显示了四种面部表情(正常、微笑、惊讶和愤怒)作为输入数据。这些数据来自52人,并在室外条件下(中午和下午)使用网络摄像头拍摄。CNN-VGG的深度和速度足以满足人脸识别和面部表情识别的需要。结果表明,VGG-f模型架构可以克服简单CNN架构带来的欠拟合和过拟合问题。测试结果表明,VGG-f模型能够较好地识别人脸和面部表情。在白天和下午,104张人脸的平均识别准确率分别为86.5%和90.4%。此外,在白天和中午,识别52个人的四种不同面部表情的平均准确率分别为72%和74%。识别错误可能是由于图像之间的相似性造成的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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