Research and reflection on college physical education classroom teaching based on SSGAN model

Teaching behavior recognition has a wide range of applications in the smart classroom and is one of the important means to achieve educational intelligence. To improve the performance of indoor teaching behavior recognition using CSI in complex scenes, this paper proposes an indoor teaching behavior...

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Main Author: Liao Yubing
Format: Article
Language:English
Published: Sciendo 2024-01-01
Series:Applied Mathematics and Nonlinear Sciences
Subjects:
Online Access:https://doi.org/10.2478/amns.2023.2.00405
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author Liao Yubing
author_facet Liao Yubing
author_sort Liao Yubing
collection DOAJ
description Teaching behavior recognition has a wide range of applications in the smart classroom and is one of the important means to achieve educational intelligence. To improve the performance of indoor teaching behavior recognition using CSI in complex scenes, this paper proposes an indoor teaching behavior recognition algorithm based on multi-feature fusion MLSTM by eliminating background noise to circumvent the influence of the experimental environment on CSI. To address the problem, the model cannot generalize in recognizing new users, and the labeled samples of new users are difficult to obtain in large quantities in a short period of time. In this paper, a new user recognition algorithm based on the SSGAN model is constructed, and then the input and output of MLSTM are modified as the discriminator of SSGAN to improve the recognition performance of the model for new users by semi-supervised learning. The recognition accuracy of the M-LSTM model on the sports, daily, and dance datasets is 0.985, 0.966, and 0.944, respectively, and the recognition accuracy of the SSGAN model on the three datasets is also around 90%, as verified by different experiments. The p-value is less than 0.05, and the student’s interest in physical education in the experimental group is 2.6 times higher than that in the control group. Therefore, the model proposed in this paper has good practicality.
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spelling doaj.art-bb322f14d3eb49ec8a8c00d8ef11c6c52024-01-29T08:52:32ZengSciendoApplied Mathematics and Nonlinear Sciences2444-86562024-01-019110.2478/amns.2023.2.00405Research and reflection on college physical education classroom teaching based on SSGAN modelLiao Yubing0School of Physical Education and Health Care, Sanming University, Sanming, Fujian, 365000, ChinaTeaching behavior recognition has a wide range of applications in the smart classroom and is one of the important means to achieve educational intelligence. To improve the performance of indoor teaching behavior recognition using CSI in complex scenes, this paper proposes an indoor teaching behavior recognition algorithm based on multi-feature fusion MLSTM by eliminating background noise to circumvent the influence of the experimental environment on CSI. To address the problem, the model cannot generalize in recognizing new users, and the labeled samples of new users are difficult to obtain in large quantities in a short period of time. In this paper, a new user recognition algorithm based on the SSGAN model is constructed, and then the input and output of MLSTM are modified as the discriminator of SSGAN to improve the recognition performance of the model for new users by semi-supervised learning. The recognition accuracy of the M-LSTM model on the sports, daily, and dance datasets is 0.985, 0.966, and 0.944, respectively, and the recognition accuracy of the SSGAN model on the three datasets is also around 90%, as verified by different experiments. The p-value is less than 0.05, and the student’s interest in physical education in the experimental group is 2.6 times higher than that in the control group. Therefore, the model proposed in this paper has good practicality.https://doi.org/10.2478/amns.2023.2.00405physical education classroom teachingcsim-lstm modelssgan modelfeature fusion.97d60
spellingShingle Liao Yubing
Research and reflection on college physical education classroom teaching based on SSGAN model
Applied Mathematics and Nonlinear Sciences
physical education classroom teaching
csi
m-lstm model
ssgan model
feature fusion.
97d60
title Research and reflection on college physical education classroom teaching based on SSGAN model
title_full Research and reflection on college physical education classroom teaching based on SSGAN model
title_fullStr Research and reflection on college physical education classroom teaching based on SSGAN model
title_full_unstemmed Research and reflection on college physical education classroom teaching based on SSGAN model
title_short Research and reflection on college physical education classroom teaching based on SSGAN model
title_sort research and reflection on college physical education classroom teaching based on ssgan model
topic physical education classroom teaching
csi
m-lstm model
ssgan model
feature fusion.
97d60
url https://doi.org/10.2478/amns.2023.2.00405
work_keys_str_mv AT liaoyubing researchandreflectiononcollegephysicaleducationclassroomteachingbasedonssganmodel