Abstract
Intelligent video monitoring and analysis enable correction of personalized learning behavior from a quantitative perspective. Unfortunately, such approaches can only suggest individual concentration level/status and thinking activity based on their appearance, which is subjective. Although resting-state electroencephalogram (EEG) has been recognized as an indicator which is closely related to people’s thinking activities, EEG based models have not yet provided sufficient solutions due to following reasons: (1) insufficient extraction of features due to single modality of input signal; (2) lack of attention to multiscale features caused by the convolutions with single kernel size. To address the issues above, we propose the following solutions. Firstly, a paradigm is designed for extracting resting-state EEG before class (pre-class) and after class (post-class) instead of video monitoring in class. Secondly, we propose a novel framework named multimodal and multiscale Convolutional Neural Network (\(\mathrm { M^{3}S \text{- }CNN}\)) for feature extraction, which consists of two modules: (1) a feature extraction module with Gramian Angular Summation Field (GASF) and Gramian Angular Difference Field (GADF), aiming to transform the EEG features into forms of pictures and (2) a multiscale module, aiming to improve feature extraction ability by grouping different convolution kernel sizes. Finally, a number of classifiers are employed for student status identification. \(\mathrm{M^{3}S\text{- }CNN}\) is evaluated using one private dataset for three classes, which is divided into training, validation and test sets using an 8:1:1 ratio. Experimental results demonstrate that \(\mathrm{M^{3}S\text{- }CNN}\) along with the classifier of Random Forest (RF) is superior to others with accuracy of 99.77%. This indicates the viability of the proposed model for identification of student status during class.
Y. Xu, J. Luo, J. Liang and S. Song—Contributed equally to the work.
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Acknowledgement
This work is supported by Beijing Natural Science Foundation (4202011), National Natural Science Foundation of China (61572076).
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Xu, Y. et al. (2023). \(\mathrm {M^{3}S \text{- }CNN}\): Resting-State EEG Based Multimodal and Multiscale Feature Extraction for Student Behavior Prediction in Class. In: Tanveer, M., Agarwal, S., Ozawa, S., Ekbal, A., Jatowt, A. (eds) Neural Information Processing. ICONIP 2022. Communications in Computer and Information Science, vol 1792. Springer, Singapore. https://doi.org/10.1007/978-981-99-1642-9_44
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