Analysis of baseball behavior recognition model based on Dual-GCN improved by motion weights

Abstract This research aims to address the poor performance in baseball behavior recognition, insufficient connection between characters, and low accuracy in baseball behavior recognition. A motion weight improvement model based on dual-graph convolutional network is proposed. The new model takes a...

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Main Author: Ji Li
Format: Article
Language:English
Published: Nature Portfolio 2025-07-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-025-10681-z
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author Ji Li
author_facet Ji Li
author_sort Ji Li
collection DOAJ
description Abstract This research aims to address the poor performance in baseball behavior recognition, insufficient connection between characters, and low accuracy in baseball behavior recognition. A motion weight improvement model based on dual-graph convolutional network is proposed. The new model takes a dual-graph convolutional network for behavior recognition and key region segmentation of baseball video images, and enhances the correlation and contribution between characters through motion weights. The research results indicated that the new model performed best when the image frame rate was 1/2w, the width of the key area was 1/2H, and the number of key areas was 2. The highest accuracy was 94.84%, which was 12.06% higher than that of the hierarchical temporal depth model. After adding motion weights, the accuracy improved by 3.45%. The accuracy of baseball recognition using different models has been effectively improved. The new model can more effectively recognize baseball behavior, which has important guiding significance for behavior recognition in baseball sports.
format Article
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institution Kabale University
issn 2045-2322
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spelling doaj-art-41b4b705a5b44ba19650b871af3bbd7b2025-08-20T03:42:25ZengNature PortfolioScientific Reports2045-23222025-07-0115111710.1038/s41598-025-10681-zAnalysis of baseball behavior recognition model based on Dual-GCN improved by motion weightsJi Li0School of Sports Training, Jilin Sport UniversityAbstract This research aims to address the poor performance in baseball behavior recognition, insufficient connection between characters, and low accuracy in baseball behavior recognition. A motion weight improvement model based on dual-graph convolutional network is proposed. The new model takes a dual-graph convolutional network for behavior recognition and key region segmentation of baseball video images, and enhances the correlation and contribution between characters through motion weights. The research results indicated that the new model performed best when the image frame rate was 1/2w, the width of the key area was 1/2H, and the number of key areas was 2. The highest accuracy was 94.84%, which was 12.06% higher than that of the hierarchical temporal depth model. After adding motion weights, the accuracy improved by 3.45%. The accuracy of baseball recognition using different models has been effectively improved. The new model can more effectively recognize baseball behavior, which has important guiding significance for behavior recognition in baseball sports.https://doi.org/10.1038/s41598-025-10681-zMotion weightDual-GCNBaseball sportBehavior recognitionCharacter
spellingShingle Ji Li
Analysis of baseball behavior recognition model based on Dual-GCN improved by motion weights
Scientific Reports
Motion weight
Dual-GCN
Baseball sport
Behavior recognition
Character
title Analysis of baseball behavior recognition model based on Dual-GCN improved by motion weights
title_full Analysis of baseball behavior recognition model based on Dual-GCN improved by motion weights
title_fullStr Analysis of baseball behavior recognition model based on Dual-GCN improved by motion weights
title_full_unstemmed Analysis of baseball behavior recognition model based on Dual-GCN improved by motion weights
title_short Analysis of baseball behavior recognition model based on Dual-GCN improved by motion weights
title_sort analysis of baseball behavior recognition model based on dual gcn improved by motion weights
topic Motion weight
Dual-GCN
Baseball sport
Behavior recognition
Character
url https://doi.org/10.1038/s41598-025-10681-z
work_keys_str_mv AT jili analysisofbaseballbehaviorrecognitionmodelbasedondualgcnimprovedbymotionweights