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Abstract
In sports data analysis and visualization, understanding collective tactical behavior has become an integral part. Interactive and automatic data analysis is instrumental in making use of growing amounts of compound information. In professional team sports, gathering and analyzing sportsperson monitoring data are common practice, intending to evaluate fatigue and succeeding adaptation responses, analyze performance potential, and reduce injury and illness risk. Data visualization technology born in the era of big data analytics provides a good foundation for further developing fitness tools based on artificial intelligence (AI). Hence, this study proposed a video-based effective visualization framework (VEVF) based on artificial intelligence and big data analytics. This study uses the machine learning method to categorize the sports video by extracting both the videos' temporal and spatial features. Our system is based on convolutional neural networks united with temporal pooling layers. The experimental outcomes demonstrate that the recommended VEVF model enhances the accuracy ratio of 98.7%, recall ratio of 94.5%, F1-score ratio of 97.9%, the precision ratio of 96.7%, the error rate of 29.1%, the performance ratio of 95.2%, an efficiency ratio of 96.1% compared to other existing models.
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Details
1 Hunan University of Science and Technology, School of Physical Education, Xiangtan, China (GRID:grid.411429.b) (ISNI:0000 0004 1760 6172)
2 SRM Institute of Science and Technology, Department of Computer Science and Engineering, Ghaziabad, India (GRID:grid.412742.6) (ISNI:0000 0004 0635 5080)
3 VIT Bhopal University, School of Computing Science and Engineering, Bhopal, India (GRID:grid.411530.2) (ISNI:0000 0001 0694 3745)