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Learning Behavior Analysis in Classroom Based on Deep Learning

机译:基于深度学习的课堂学习行为分析

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In this work, we study learning behavior analysis for automatic evaluation of the classroom teaching. We define five classroom learning behaviors including listen, fatigue, hand-up, sideways and read-write, and construct a class-room learning behavior dataset named as ActRec-Classroom, which includes five categories with 5,126 images in total. With the aid of convolutional neural network (CNN), we propose a classroom learning behavior analysis system framework. Firstly, Faster R-CNN is used to detect human body. Then OpenPose is used to extract key points of human skeleton, faces and fingers. Finally, a CNN based classifier is designed for action recognition. Extensive experiments validate the proposed system. The validation accuracy reaches 92.86% on average, and it meets the need of learning behavior analysis in the real classroom teaching environment.
机译:在这项工作中,我们研究了课堂教学自动评估的学习行为分析。我们定义了五个课堂学习行为,包括倾听,疲劳,手指,侧面和读写,并构建一个名为Actrec-Crassroom的类别学习行为数据集,其中包括五类,总共包括5,126个图像。借助卷积神经网络(CNN),我们提出了一个课堂学习行为分析系统框架。首先,更快的R-CNN用于检测人体。然后openpose用于提取人类骨架,面部和手指的关键点。最后,设计了基于CNN的分类器,用于动作识别。广泛的实验验证了所提出的系统。平均验证准确度达到92.86%,符合真实课堂教学环境中学习行为分析的需要。

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