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Improving state-of-the-art in Detecting Student Engagement with Resnet and TCN Hybrid Network

机译:在检测与RESET和TCN混合网络的学生参与时改进最先进的

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Automatic detection of students' engagement in online learning settings is a key element to improve the quality of learning and to deliver personalized learning materials to them. Varying levels of engagement exhibited by students in an online classroom is an affective behavior that takes place over space and time. Therefore, we formulate detecting levels of students' engagement from videos as a spatio-temporal classification problem. In this paper, we present a novel end-to-end Residual Network (ResNet) and Temporal Convolutional Network (TCN) hybrid neural network architecture for students' engagement level detection in videos. The 2D ResNet extracts spatial features from consecutive video frames, and the TCN analyzes the temporal changes in video frames to detect the level of engagement. The spatial and temporal arms of the hybrid network are jointly trained on raw video frames of a large publicly available students' engagement detection dataset, DAiSEE. We compared our method with several competing students' engagement detection methods on this dataset. The ResNet+TCN architecture outperforms all other studied methods, improves the state-of-the-art engagement level detection accuracy, and sets a new baseline for future research.
机译:自动检测在线学习环境中的学生参与是提高学习质量的关键要素,并向他们提供个性化学习材料。在网上课堂上的学生展出的不同级别是一种在空间和时间内发生的情感行为。因此,我们将学生与视频的竞争水平标准化为时空分类问题。在本文中,我们提出了一种新的端到端残余网络(Reset)和时间卷积网络(TCN)混合神经网络架构,用于视频中的学生参与水平检测。 2D Reset提取来自连续视频帧的空间特征,TCN分析视频帧中的时间变化以检测接合水平。混合网络的空间和时间武器在大型公共专业学生参与DataSet,Daisee的原始视频框架上进行了联合培训。我们将我们的方法与此数据集进行了几个竞争学生的参与检测方法进行了比较。 Reset + TCN体系结构优于所有其他研究的方法,提高了最先进的接触水平检测精度,并为未来的研究设置了新的基线。

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