The Attention Mechanism Performance Analysis for Football Players Using the Internet of Things and Deep Learning

This work proposes a novel Class Aware Network (CANet) for analyzing football player performance by decoding their body movements. Firstly, the role of the Internet of Things in football sports analysis and the advantages of deep learning techniques are introduced. Secondly, pyramid pooling modules...

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Main Author: Chuan Mou
Format: Article
Language:English
Published: IEEE 2024-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10380550/
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author Chuan Mou
author_facet Chuan Mou
author_sort Chuan Mou
collection DOAJ
description This work proposes a novel Class Aware Network (CANet) for analyzing football player performance by decoding their body movements. Firstly, the role of the Internet of Things in football sports analysis and the advantages of deep learning techniques are introduced. Secondly, pyramid pooling modules and attention mechanisms are introduced. Moreover, the Group-split-bottleneck (GS-bt) module is employed, and the CANet is designed to extract and utilize multi-scale feature information and enhance the network’s ability to perceive details. Finally, the effectiveness of the proposed model is validated through comparisons with other models. The results show that in image classification experiments, the mean accuracy of the GS-bt module is at least 2.79% higher than that of other models. In human body parsing experiments, results from two different datasets demonstrate that the CANet model achieves the highest mean Intersection over Union, improving by at least 6.02% compared to other models. These findings indicate that the proposed CANet model performs better in image classification and human body parsing tasks, presenting higher accuracy and generalization capabilities. This work provides new methods and technologies for analyzing football player performance, potentially promoting sports development and application in athletics.
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spelling doaj-art-425c08dbf311411eab7ff9d402f1510f2025-01-31T23:04:23ZengIEEEIEEE Access2169-35362024-01-01124948495710.1109/ACCESS.2024.335003610380550The Attention Mechanism Performance Analysis for Football Players Using the Internet of Things and Deep LearningChuan Mou0https://orcid.org/0009-0005-2513-6996Institute of Physical Education, Sichuan University, Chengdu, Sichuan, ChinaThis work proposes a novel Class Aware Network (CANet) for analyzing football player performance by decoding their body movements. Firstly, the role of the Internet of Things in football sports analysis and the advantages of deep learning techniques are introduced. Secondly, pyramid pooling modules and attention mechanisms are introduced. Moreover, the Group-split-bottleneck (GS-bt) module is employed, and the CANet is designed to extract and utilize multi-scale feature information and enhance the network’s ability to perceive details. Finally, the effectiveness of the proposed model is validated through comparisons with other models. The results show that in image classification experiments, the mean accuracy of the GS-bt module is at least 2.79% higher than that of other models. In human body parsing experiments, results from two different datasets demonstrate that the CANet model achieves the highest mean Intersection over Union, improving by at least 6.02% compared to other models. These findings indicate that the proposed CANet model performs better in image classification and human body parsing tasks, presenting higher accuracy and generalization capabilities. This work provides new methods and technologies for analyzing football player performance, potentially promoting sports development and application in athletics.https://ieeexplore.ieee.org/document/10380550/Internet of Thingsdeep learningattention mechanismfootball player performance analysishuman body parsing
spellingShingle Chuan Mou
The Attention Mechanism Performance Analysis for Football Players Using the Internet of Things and Deep Learning
IEEE Access
Internet of Things
deep learning
attention mechanism
football player performance analysis
human body parsing
title The Attention Mechanism Performance Analysis for Football Players Using the Internet of Things and Deep Learning
title_full The Attention Mechanism Performance Analysis for Football Players Using the Internet of Things and Deep Learning
title_fullStr The Attention Mechanism Performance Analysis for Football Players Using the Internet of Things and Deep Learning
title_full_unstemmed The Attention Mechanism Performance Analysis for Football Players Using the Internet of Things and Deep Learning
title_short The Attention Mechanism Performance Analysis for Football Players Using the Internet of Things and Deep Learning
title_sort attention mechanism performance analysis for football players using the internet of things and deep learning
topic Internet of Things
deep learning
attention mechanism
football player performance analysis
human body parsing
url https://ieeexplore.ieee.org/document/10380550/
work_keys_str_mv AT chuanmou theattentionmechanismperformanceanalysisforfootballplayersusingtheinternetofthingsanddeeplearning
AT chuanmou attentionmechanismperformanceanalysisforfootballplayersusingtheinternetofthingsanddeeplearning