基于IDT方法的体育学生活动识别研究

Jiazhi Du, Shijun Dong, Chunrong Li, Weigang Lu
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摘要

随着新课程改革的推进,体育教学质量越来越受到教育工作者的重视。然而,传统的体育课评价方法效率不高,而且往往浪费时间。本文尝试用活动识别的方法来实现体育课的自动评价。近年来,活动识别方法被广泛应用于监控、基于内容的视频索引等各个领域。本文采用活动识别方法,从学生的体育活动录像中对学生的体育活动进行评价,实现对体育教学的智能化评价。在此过程中,使用了改进的密集轨迹(IDT)、fisher向量(FV)、主成分分析(PCA)和支持向量机(SVM)。实验结果表明,无论使用何种特征描述符,分类精度都是足够的,可以有效地进行运动识别,并对运动质量进行自动评价。
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Research on activity recognition of students in physical education based on IDT method
With the advancement of new curriculum reform, educators put more attentions on the quality of physical education (PE). However, the traditional way to evaluate the PE class is not efficient and often time-wasting. In this paper, we attempt to realize the automatic evaluation of PE class by activity recognition. Recently, activity recognition methods are widely applied in various fields, e.g., surveillance, content-based video indexing. This paper utilizes an activity recognition method to evaluate the performance of students in PE from their activities recorded in videos in order to realize intelligent evaluation of the physical education. In this process, the improved dense trajectory (IDT), fisher vector (FV), principal component analysis (PCA) and support vector machine (SVM) are in use. The experiments demonstrate that no matter what feature descriptor is used, the classification accuracy is adequate, so that the activity recognition is effective in PE and the quality of PE can be evaluated automatically.
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