Advances in Nano Research
Volume 12, Number 2, 2022, pages 223-229
DOI: 10.12989/anr.2022.12.2.223
Using CNN- VGG 16 to detect the tennis motion tracking by information entropy and unascertained measurement theory
Yongfeng Zhong and Xiaojun Liang
Abstract
Object detection has always been to pursue objects with particular properties or representations and to predict details on objects including the positions, sizes and angle of rotation in the current picture. This was a very important subject of computer vision science. While vision-based object tracking strategies for the analysis of competitive videos have been developed, it is still difficult to accurately identify and position a speedy small ball. In this study, deep learning (DP) network was developed to face these obstacles in the study of tennis motion tracking from a complex perspective to understand the performance of athletes. This research has used CNN-VGG 16 to tracking the tennis ball from broadcasting videos while their images are distorted, thin and often invisible not only to identify the image of the ball from a single frame, but also to learn patterns from consecutive frames, then VGG 16 takes images with 640 to 360 sizes to locate the ball and obtain high accuracy in public videos. VGG 16 tests 99.6%, 96.63%, and 99.5%, respectively, of accuracy. In order to avoid overfitting, 9 additional videos and a subset of the previous dataset are partly labelled for the 10-fold cross-validation. The results show that CNN-VGG 16 outperforms the standard approach by a wide margin and provides excellent ball tracking performance.
Key Words
computer vision science; deep learning (DP); information entropy; unascertained measurement theory
Address
Yongfeng Zhong: College of Physical Education, Changsha University, Changsha 410022, Hunan, China
Xiaojun Liang: Ministry of Public Foundation, Zhaoqing Medical College, Zhaoqing 526020, Guangdong, China/ Graduate School, University of Perpetual Help System DALTA, Las Pinas City 1740, Manila, Philippines