Facial Expression Recognition on Video Data with Various Face Poses Using Deep Learning

Ayas Faikar Nafis, Dini Adni Navastara, A. Yuniarti
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引用次数: 5

Abstract

Facial expressions in humans produce non-verbal communication to convey emotional states in humans; hence, they play an essential role in social interactions between humans. Along with the times, research on facial expression analysis has expanded to automatic facial expression recognition by computers. The facial expression recognition plays a vital role in human-computer interactions, monitoring human behavior, educational techniques, psychological, to sociable robots. In this study, the development of human facial expression recognition was carried out using a deep learning method called You Only Look Once (YOLO) based on Convolutional Neural Network (CNN). There are seven classes of facial expressions that can be recognized, namely angry, disgust, fear, happy, sadness, surprise, and neutral. The datasets used are video-based facial expression datasets such as CK+, IMED, and video data from 8 students of the Informatics Department, Institut Teknologi Sepuluh Nopember (ITS), with various face poses. Based on the experimental results, the best accuracy of the still image dataset is 94% on the CK+ dataset with channel three and learning rate 0.01. Moreover, the accuracy of video data with various face poses achieves 73%.
基于深度学习的不同面部姿态视频数据面部表情识别
人类的面部表情产生非语言交流来传达人类的情绪状态;因此,它们在人类之间的社会交往中起着至关重要的作用。随着时代的发展,面部表情分析的研究已经扩展到计算机的面部表情自动识别。面部表情识别在人机交互、监控人类行为、教育技术、心理、社交机器人等方面发挥着至关重要的作用。在本研究中,使用基于卷积神经网络(CNN)的深度学习方法You Only Look Once (YOLO)进行人类面部表情识别的开发。可以识别的面部表情有七种,即生气、厌恶、恐惧、快乐、悲伤、惊讶和中性。使用的数据集是基于视频的面部表情数据集,如CK+, IMED,以及来自Sepuluh十一月理工学院信息部(ITS) 8名学生的各种面部姿势的视频数据。实验结果表明,在三通道的CK+数据集上,学习速率为0.01,静止图像数据集的最佳准确率为94%。此外,不同人脸姿态的视频数据准确率达到73%。
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