A Sports Training Video Classification Model Based on Deep Learning

A sports training video classification model based on deep learning is studied for targeting low classification accuracy caused by the randomness of objective movement in sports training video. The camera calibration technology is used to restore the position of the target in the real three-dimensio...

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Main Author: Yunjun Xu
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Scientific Programming
Online Access:http://dx.doi.org/10.1155/2021/7252896
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spelling doaj-1b67bcd3173740b1989d3d7904a9dc2a2021-07-02T21:09:02ZengHindawi LimitedScientific Programming1875-919X2021-01-01202110.1155/2021/7252896A Sports Training Video Classification Model Based on Deep LearningYunjun Xu0School of Physical EducationA sports training video classification model based on deep learning is studied for targeting low classification accuracy caused by the randomness of objective movement in sports training video. The camera calibration technology is used to restore the position of the target in the real three-dimensional space. After the camera calibration in the video, the sports training video is preprocessed. The input video segment is divided into equal length segments to obtain the subvideo segment. The motion vector field, brightness feature, color feature, and texture feature of the subvideo segment are extracted, and the extracted features are input into the AlexNet convolutional neural network. ReLU is used as the activation function in this convolutional neural network. Local response normalization is used to suppress and enhance the output of neurons to highlight the performance of useful information, so that the output classification results are more accurate. Event matching method is used to match the convolutional neural network output to complete the sports training video classification. The experimental results of the proposed study show that the model can effectively solve the problems of target moving randomness. The classification accuracy of sports training video is more than 99%, and the classification speed is faster which is shown from the results of the experiments.http://dx.doi.org/10.1155/2021/7252896
collection DOAJ
language English
format Article
sources DOAJ
author Yunjun Xu
spellingShingle Yunjun Xu
A Sports Training Video Classification Model Based on Deep Learning
Scientific Programming
author_facet Yunjun Xu
author_sort Yunjun Xu
title A Sports Training Video Classification Model Based on Deep Learning
title_short A Sports Training Video Classification Model Based on Deep Learning
title_full A Sports Training Video Classification Model Based on Deep Learning
title_fullStr A Sports Training Video Classification Model Based on Deep Learning
title_full_unstemmed A Sports Training Video Classification Model Based on Deep Learning
title_sort sports training video classification model based on deep learning
publisher Hindawi Limited
series Scientific Programming
issn 1875-919X
publishDate 2021-01-01
description A sports training video classification model based on deep learning is studied for targeting low classification accuracy caused by the randomness of objective movement in sports training video. The camera calibration technology is used to restore the position of the target in the real three-dimensional space. After the camera calibration in the video, the sports training video is preprocessed. The input video segment is divided into equal length segments to obtain the subvideo segment. The motion vector field, brightness feature, color feature, and texture feature of the subvideo segment are extracted, and the extracted features are input into the AlexNet convolutional neural network. ReLU is used as the activation function in this convolutional neural network. Local response normalization is used to suppress and enhance the output of neurons to highlight the performance of useful information, so that the output classification results are more accurate. Event matching method is used to match the convolutional neural network output to complete the sports training video classification. The experimental results of the proposed study show that the model can effectively solve the problems of target moving randomness. The classification accuracy of sports training video is more than 99%, and the classification speed is faster which is shown from the results of the experiments.
url http://dx.doi.org/10.1155/2021/7252896
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AT yunjunxu sportstrainingvideoclassificationmodelbasedondeeplearning
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