Mehta Naval Kishore, Prasad Shyam Sunder, Saurav Sumeet, Saini Ravi, Singh Sanjay
Academy of Scientific and Innovative Research(AcSIR), Ghaziabad, India.
CSIR-Central Electronics Engineering Research Institute(CSIR-CEERI), Pilani, India.
Appl Intell (Dordr). 2022;52(12):13803-13823. doi: 10.1007/s10489-022-03200-4. Epub 2022 Mar 18.
Today, due to the widespread outbreak of the deadly coronavirus, popularly known as COVID-19, the traditional classroom education has been shifted to computer-based learning. Students of various cognitive and psychological abilities participate in the learning process. However, most students are hesitant to provide regular and honest feedback on the comprehensiveness of the course, making it difficult for the instructor to ensure that all students are grasping the information at the same rate. The students' understanding of the course and their emotional engagement, as indicated via facial expressions, are intertwined. This paper attempts to present a three-dimensional DenseNet self-attention neural network (DenseAttNet) used to identify and evaluate student participation in modern and traditional educational programs. With the Dataset for Affective States in E-Environments (DAiSEE), the proposed DenseAttNet model outperformed all other existing methods, achieving baseline accuracy of 63.59% for engagement classification and 54.27% for boredom classification, respectively. Besides, DenseAttNet trained on all four multi-labels, namely boredom, engagement, confusion, and frustration has registered an accuracy of 81.17%, 94.85%, 90.96%, and 95.85%, respectively. In addition, we performed a regression experiment on DAiSEE and obtained the lowest Mean Square Error (MSE) value of 0.0347. Finally, the proposed approach achieves a competitive MSE of 0.0877 when validated on the Emotion Recognition in the Wild Engagement Prediction (EmotiW-EP) dataset.
如今,由于致命的冠状病毒(俗称COVID-19)的广泛爆发,传统的课堂教育已转向基于计算机的学习。各种认知和心理能力的学生都参与到学习过程中。然而,大多数学生对于课程的全面性不愿定期提供真实的反馈,这使得教师难以确保所有学生都以相同的速度掌握信息。学生对课程的理解以及他们通过面部表情所表现出的情感投入是相互交织的。本文试图提出一种三维密集连接网络自注意力神经网络(DenseAttNet),用于识别和评估学生在现代和传统教育项目中的参与情况。使用电子环境中的情感状态数据集(DAiSEE),所提出的DenseAttNet模型优于所有其他现有方法,参与度分类的基线准确率分别为63.59%,无聊分类的基线准确率为54.27%。此外,在所有四个多标签(即无聊、参与度、困惑和沮丧)上训练的DenseAttNet的准确率分别为81.17%、94.85%、90.96%和95.85%。此外,我们在DAiSEE上进行了回归实验,获得了最低均方误差(MSE)值0.0347。最后,当在野外参与度预测的情感识别(EmotiW-EP)数据集上进行验证时,所提出的方法实现了具有竞争力的MSE值0.0877。