Deep Learning Approaches for Classification of Emotion Recognition based on Facial Expressions

Ahmed Adnan Hameed Qutub, Yılmaz Atay
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Abstract

Automated emotion recognition (AEE) plays a crucial role in numerous industries that depend on understanding human emotional responses, such as advertising, technology, and human-robot interaction, particularly within the Information Technology (IT) field. However, current systems can often come up short in comprehensively understanding an individual's emotions, as prior research has mainly focused on assessing facial expressions and categorizing them into seven primary emotions, including neutrality. In this study, we present several Deep Convolutional Neural Network (CNN) models designed specifically for the task of facial emotion recognition, utilizing the FER2013 and RAF datasets. The baseline CNN model is established through a trial-and-error method, and its results are compared with more complex deep learning techniques, including ResNet18, VGGNet16, VGGNet19, and Efficient Net-B0 models. Among these models, the VGGNet19 model achieved the best results with a test accuracy of 71.02% on the FER2013 dataset. In comparison, the ResNet18 model outperformed all other models with an 86.02% test accuracy on the RAF-DB dataset. These results underscore the potential for advancing automated emotion recognition through complex deep-learning techniques.
基于面部表情的情绪识别分类深度学习方法
自动情绪识别(AEE)在众多依赖于理解人类情绪反应的行业中发挥着至关重要的作用,如广告、技术和人机交互,尤其是在信息技术(IT)领域。然而,目前的系统往往无法全面理解个人的情绪,因为之前的研究主要集中在评估面部表情并将其分为七种主要情绪,包括中性情绪。在本研究中,我们利用 FER2013 和 RAF 数据集,介绍了几个专为面部情绪识别任务设计的深度卷积神经网络(CNN)模型。基线 CNN 模型是通过试错法建立的,其结果与更复杂的深度学习技术进行了比较,包括 ResNet18、VGGNet16、VGGNet19 和 Efficient Net-B0 模型。在这些模型中,VGGNet19 模型取得了最好的结果,在 FER2013 数据集上的测试准确率为 71.02%。相比之下,ResNet18 模型在 RAF-DB 数据集上的测试准确率为 86.02%,超过了所有其他模型。这些结果凸显了通过复杂的深度学习技术推进自动情感识别的潜力。
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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