Improved Convolutional Neural Network Algorithm for Student Behavior Detection in the Classroom

Yihua Liu, Weirong Wang
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Abstract

The performance of the existing student classroom behavior detection model is affected by various aspects such as dataset, algorithm and height as well as the differences between different classrooms, and there are problems such as a single dataset, low accuracy and low efficiency. In order to improve the accuracy of student classroom behavior detection algorithm, this paper proposes a student classroom behavior detection method based on improved convolutional neural network algorithm. Firstly, the student behavior detection dataset is constructed, and the student classroom behavior detection technology scheme is designed; secondly, in order to improve the detection accuracy, the features are extracted by using the new jumping bi-directional paths, and the attention mechanism module is added at different positions to improve the path aggregation network; weekly, the embedding positions of the attention mechanism strategy are determined by analyzing multiple sets of experiments, and the proposed student classroom behavior detection algorithm's effectiveness and superiority.
用于课堂学生行为检测的改进型卷积神经网络算法
现有的学生课堂行为检测模型的性能受数据集、算法、高度等多方面的影响,以及不同教室之间的差异,存在数据集单一、准确率低、效率低等问题。为了提高学生课堂行为检测算法的准确性,本文提出了一种基于改进卷积神经网络算法的学生课堂行为检测方法。首先,构建了学生行为检测数据集,设计了学生课堂行为检测技术方案;其次,为了提高检测精度,利用新的跳跃式双向路径提取特征,并在不同位置加入注意力机制模块,完善路径聚合网络;每周,通过多组实验分析,确定注意力机制策略的嵌入位置,提出学生课堂行为检测算法的有效性和优越性。
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