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首页> 外文期刊>International Journal of Wavelets, Multiresolution and Information Processing >Student body gesture recognition based on Fisher broad learning system
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Student body gesture recognition based on Fisher broad learning system

机译:基于Fisher广泛学习系统的学生身体姿态识别

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摘要

Observing student body gesture has been widely used to assess teaching effectiveness over the past few decades. However, manual observation is not suitable for the automatic data analysis in the field of learning analytics. Consequently, a student body gesture recognition method based on Fisher Broad Learning System (FBLS) and Local Log-Euclidean Multivariate Gaussian (L(2)EMG) is proposed in this paper. FBLS is designed by introducing the discriminative information into the hidden layer of Broad Learning System (BLS) and reducing the dimensionality of hidden-layer representations. FBLS has superiorities in accuracy and speed. in addition, L(2)EMG, which is a highly distinctive descriptor, characterizes the local image with a multivariate Gaussian distribution. So L(2)EMG features are fed into the FBLS for recognition in this paper. Extensive experimental results on self-built dataset show that the proposed student body gesture recognition method obtains better results than other benchmarking methods.
机译:观察学生的身体姿态已被广泛用于评估过去几十年的教学效果。但是,手动观察不适用于学习分析领域的自动数据分析。因此,本文提出了一种基于Fisher广泛学习系统(FBLS)和局部日志欧几里德多变量高斯(L(2)EMG)的学生身体手势识别方法。 FBLS是通过将鉴别的信息引入广泛的学习系统(BLS)的隐藏层来设计,并降低隐藏层表示的维度。 FBLS精度和速度优势。另外,L(2)是一种高度独特的描述符的EMG,其具有多变量高斯分布的本地图像。所以L(2)EMG功能被送入FBLS中的识别。自建数据集的广泛实验结果表明,所提出的学生身体手势识别方法比其他基准方法获得更好的结果。

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