Student Action Recognition Based on Fuzzy Broad Learning System

Yantao Wei, Fen Lei, Jie Gao, Xiuhan Li
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引用次数: 1

Abstract

Automatic recognition of student action is an important means to evaluate students' learning status in the class. It also provides a technique for measuring the effectiveness of teaching. However, the complexity of student action poses a challenge to automatic recognition. In this paper, a student action recognition method based on the fuzzy broad learning system (fuzzy BLS) is proposed. Fuzzy BLS is designed by merging the Takagi-Sugeno (TS) fuzzy system into BLS. As a neuro-fuzzy model, fuzzy BLS overcomes some problems, such as suffering from a time-consuming training stage and a large number of fuzzy rules. To get more abundant local features from student action images, we use the Scale-Invariant Feature Transform (SIFT) descriptor combined with the Local LogEuclidean Multivariate Gaussian $(\mathrm{L}^{2}\mathrm{E}\mathrm{M}\mathrm{G})$ descriptor to extract image features. Then, the extracted features are fed into fuzzy BLS after dimension reduction. The experimental results on the self-built dataset have shown that the proposed student action recognition method achieves better performance than other benchmarking methods.
基于模糊广义学习系统的学生行为识别
学生动作自动识别是评价学生课堂学习状况的重要手段。它还提供了一种衡量教学效果的技术。然而,学生行为的复杂性给自动识别带来了挑战。提出了一种基于模糊广义学习系统(fuzzy BLS)的学生动作识别方法。模糊BLS是将Takagi-Sugeno (TS)模糊系统合并到BLS中设计的。模糊BLS作为一种神经模糊模型,克服了训练阶段较长、模糊规则较多等问题。为了从学生动作图像中获得更丰富的局部特征,我们使用尺度不变特征变换(SIFT)描述符结合局部loeuclidean多元高斯$(\mathrm{L}^{2}\mathrm{E}\mathrm{M}\mathrm{G})$描述符提取图像特征。然后,将提取的特征进行降维后送入模糊BLS。在自建数据集上的实验结果表明,所提出的学生动作识别方法比其他基准测试方法具有更好的性能。
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