基于面部标记的卷积神经网络参与情绪分类

Aulia Nurrahma Rosanti Paidja, F. A. Bachtiar
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引用次数: 3

摘要

参与的概念是人们参与与情感感受和注意力相关的活动的方式。在电子学习环境中,参与度可以作为评估学习活动的基准,因为情感投入是指学生的情感反应,如兴趣、无聊、困惑或沮丧。一个人的情绪可以通过面部表情来识别。然而,图像的面部表情数据具有较高的维数,导致模型学习过程中的计算时间较大。为了减少计算时间和数据维数,可以使用面部地标等特征提取方法。因此,本研究旨在运用卷积神经网络(Convolutional Neural Network, CNN)方法,通过面部地标构建一个情感投入识别系统。从人脸图像数据集中提取5个人脸地标和点与中心点之间的欧氏距离作为CNN的训练数据。基于实现和分析的结果,通过5次k-fold交叉验证,CNN的平均准确率为97.51%。这些结果与Deep Neural Network(平均准确率为97.14%)和SVM(平均准确率为89.84%)进行了比较。准确度结果表明,CNN比其他方法更成功地识别了参与情绪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Engagement Emotion Classification through Facial Landmark Using Convolutional Neural Network
The concept of engagement is the way people are involved in an activity that relates to emotional feelings and attention. In an e-learning environment, engagement can be used as a benchmark for evaluating learning activities because emotional involvement refers to students' affective reactions such as interest, boredom, confusion, or frustration. A person's emotions can be recognized through facial expressions. However, facial expression data of images have high dimensions, resulting in large computational time in the model learning process. To reduce computation time and data dimensions, feature extraction methods such as facial landmarks can be used. Therefore, this study aims to build an emotional engagement recognition system through facial landmarks by implementing the Convolutional Neural Network (CNN) method. Five facial landmarks and Euclidean distance between points and center point from the facial image dataset were detected which is then used as CNN training data. Based on the results of implementation and analysis, an average accuracy of 97.51% was obtained from CNN using five k-fold cross-validations. These results are compared with Deep Neural Network which achieved an average accuracy of 97.14% and SVM which achieved an average accuracy of 89.84%. The accuracy results obtained indicate that CNN successfully recognizes engagement emotion better than the other method.
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