Fused deep learning based Facial Expression Recognition of students in online learning mode

C. H. Sumalakshmi, P. Vasuki
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引用次数: 1

Abstract

In this research work, Facial Expression Recognition (FER) is used in the analysis of facial expressions during the online learning sessions in the prevailing pandemic situation. An integrated geometric and appearance feature extraction is presented for the FER of the students participating in the online classes. The integrated features provided a low‐dimensional significant feature area for better facial data representation. Feasible Weighted Squirrel Search Optimization (FW‐SSO) algorithm is applied for selecting the optimal features due to its efficient exploration of the search space and enhancement of the dynamic search. The output of the FW‐SSO algorithm is used for tuning the autoencoder. Autoencoder is used for combining the G&A features, for feature optimization process. Classification is done by using Long Short‐Term Memory (LSTM) network with Attention Mechanism (ALSTM), as it is highly efficient in capturing the long‐term dependency of the facial landmarks in the image/video sequences. The proposed fused deep learning method focuses on the fusion of the G&A features for high discrimination. Experimental analysis using FER‐2013 and LIRIS datasets demonstrated that the proposed method achieved maximum accuracy of 85.96% than the existing architectures and maximum accuracy of 88.24% than the VGGNet‐CNN architecture.
基于融合深度学习的在线学习模式下学生面部表情识别
本研究将面部表情识别技术应用于新冠肺炎疫情下在线学习过程中的面部表情分析。提出了一种基于几何特征和外观特征的综合提取方法。集成的特征为更好的面部数据表示提供了一个低维的显著特征区域。可行加权松鼠搜索优化算法(FW‐SSO)由于其对搜索空间的有效探索和对动态搜索的增强,被用于选择最优特征。FW‐SSO算法的输出用于调整自编码器。自动编码器用于组合G&A特征,用于特征优化过程。分类是通过使用长短期记忆(LSTM)网络和注意机制(ALSTM)来完成的,因为它在捕捉图像/视频序列中面部标志的长期依赖性方面效率很高。本文提出的融合深度学习方法侧重于融合G&A特征以获得高判别性。使用FER‐2013和LIRIS数据集进行的实验分析表明,该方法比现有架构的最大准确率为85.96%,比VGGNet‐CNN架构的最大准确率为88.24%。
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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