Facial Emotion Recognition and Classification Using the Convolutional Neural Network-10 (CNN-10)

IF 2.4 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Applied Computational Intelligence and Soft Computing Pub Date : 2023-10-13 DOI:10.1155/2023/2457898
Emmanuel Gbenga Dada, David Opeoluwa Oyewola, Stephen Bassi Joseph, Onyeka Emebo, Olugbenga Oluseun Oluwagbemi
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Abstract

The importance of facial expressions in nonverbal communication is significant because they help better represent the inner emotions of individuals. Emotions can depict the state of health and internal wellbeing of individuals. Facial expression detection has been a hot research topic in the last couple of years. The motivation for applying the convolutional neural network-10 (CNN-10) model for facial expression recognition stems from its ability to detect spatial features, manage translation invariance, understand expressive feature representations, gather global context, and achieve scalability, adaptability, and interoperability with transfer learning methods. This model offers a powerful instrument for reliably detecting and comprehending facial expressions, supporting usage in recognition of emotions, interaction between humans and computers, cognitive computing, and other areas. Earlier studies have developed different deep learning architectures to offer solutions to the challenge of facial expression recognition. Many of these studies have good performance on datasets of images taken under controlled conditions, but they fall short on more difficult datasets with more image diversity and incomplete faces. This paper applied CNN-10 and ViT models for facial emotion classification. The performance of the proposed models was compared with that of VGG19 and INCEPTIONV3. The CNN-10 outperformed the other models on the CK + dataset with a 99.9% accuracy score, FER-2013 with an accuracy of 84.3%, and JAFFE with an accuracy of 95.4%.
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基于卷积神经网络-10 (CNN-10)的面部情绪识别与分类
面部表情在非语言交流中的重要性是显著的,因为它们有助于更好地代表个人的内心情绪。情绪可以描述个人的健康状态和内在幸福。面部表情检测是近年来的一个研究热点。将卷积神经网络-10 (CNN-10)模型应用于面部表情识别的动机源于其检测空间特征、管理翻译不变性、理解表达特征表示、收集全局上下文以及与迁移学习方法实现可扩展性、适应性和互操作性的能力。该模型为可靠地检测和理解面部表情提供了一个强大的工具,支持在情感识别、人与计算机之间的交互、认知计算和其他领域的使用。早期的研究已经开发了不同的深度学习架构,为面部表情识别的挑战提供了解决方案。其中许多研究在受控条件下拍摄的图像数据集上表现良好,但在图像多样性更大、人脸不完整的更困难的数据集上表现不佳。本文采用CNN-10和ViT模型进行面部情绪分类。将所提模型的性能与VGG19和INCEPTIONV3进行了比较。CNN-10在CK +数据集上的准确率为99.9%,FER-2013的准确率为84.3%,JAFFE的准确率为95.4%,优于其他模型。
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来源期刊
Applied Computational Intelligence and Soft Computing
Applied Computational Intelligence and Soft Computing COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
6.10
自引率
3.40%
发文量
59
审稿时长
21 weeks
期刊介绍: Applied Computational Intelligence and Soft Computing will focus on the disciplines of computer science, engineering, and mathematics. The scope of the journal includes developing applications related to all aspects of natural and social sciences by employing the technologies of computational intelligence and soft computing. The new applications of using computational intelligence and soft computing are still in development. Although computational intelligence and soft computing are established fields, the new applications of using computational intelligence and soft computing can be regarded as an emerging field, which is the focus of this journal.
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