Real-Time Analysis of Basketball Sports Data Based on Deep Learning

This paper focuses on the theme of the application of deep learning in the field of basketball sports, using research methods such as literature research, video analysis, comparative research, and mathematical statistics to explore deep learning in real-time analysis of basketball sports data. The b...

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Main Author: Peng Yao
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/9142697
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author Peng Yao
author_facet Peng Yao
author_sort Peng Yao
collection DOAJ
description This paper focuses on the theme of the application of deep learning in the field of basketball sports, using research methods such as literature research, video analysis, comparative research, and mathematical statistics to explore deep learning in real-time analysis of basketball sports data. The basketball posture action recognition and analysis system proposed for basketball movement is composed of two parts serially. The first part is based on the bottom-up posture estimation method to locate the joint points and is used to extract the posture sequence of the target in the video. The second part is the analysis and research of the action recognition algorithm based on the convolution of the space-time graph. According to the extracted posture sequence, the basketball action of the set classification is recognized. In order to obtain more accurate and three-dimensional information, a multitraining target method can be used in training; that is, multiple indicators can be detected and feedback is provided at the same time to correct player errors in time; the other is an auxiliary method, which is compared with ordinary training. The method can actively correct technical movements, train players to form muscle memory, and improve their abilities. Through the research of this article, it provides a theoretical basis for promoting the application of deep learning in the field of basketball and also provides a theoretical reference for the wider application of deep learning in the field of sports. At the same time, the designed real-time analysis system of basketball data also provides more actual reference values for coaches and athletes.
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spelling doaj-art-851ecc6be2ba4f8b8bccbf12012c41e32025-08-20T02:08:40ZengWileyComplexity1076-27871099-05262021-01-01202110.1155/2021/91426979142697Real-Time Analysis of Basketball Sports Data Based on Deep LearningPeng Yao0China Basketball College, Beijing Sport University, Beijing 100084, ChinaThis paper focuses on the theme of the application of deep learning in the field of basketball sports, using research methods such as literature research, video analysis, comparative research, and mathematical statistics to explore deep learning in real-time analysis of basketball sports data. The basketball posture action recognition and analysis system proposed for basketball movement is composed of two parts serially. The first part is based on the bottom-up posture estimation method to locate the joint points and is used to extract the posture sequence of the target in the video. The second part is the analysis and research of the action recognition algorithm based on the convolution of the space-time graph. According to the extracted posture sequence, the basketball action of the set classification is recognized. In order to obtain more accurate and three-dimensional information, a multitraining target method can be used in training; that is, multiple indicators can be detected and feedback is provided at the same time to correct player errors in time; the other is an auxiliary method, which is compared with ordinary training. The method can actively correct technical movements, train players to form muscle memory, and improve their abilities. Through the research of this article, it provides a theoretical basis for promoting the application of deep learning in the field of basketball and also provides a theoretical reference for the wider application of deep learning in the field of sports. At the same time, the designed real-time analysis system of basketball data also provides more actual reference values for coaches and athletes.http://dx.doi.org/10.1155/2021/9142697
spellingShingle Peng Yao
Real-Time Analysis of Basketball Sports Data Based on Deep Learning
Complexity
title Real-Time Analysis of Basketball Sports Data Based on Deep Learning
title_full Real-Time Analysis of Basketball Sports Data Based on Deep Learning
title_fullStr Real-Time Analysis of Basketball Sports Data Based on Deep Learning
title_full_unstemmed Real-Time Analysis of Basketball Sports Data Based on Deep Learning
title_short Real-Time Analysis of Basketball Sports Data Based on Deep Learning
title_sort real time analysis of basketball sports data based on deep learning
url http://dx.doi.org/10.1155/2021/9142697
work_keys_str_mv AT pengyao realtimeanalysisofbasketballsportsdatabasedondeeplearning