Research on Video Target Detection and Tracking in Football Matches

Author:

Zou Xiaoju1,Huang Yuanling1,Zhou Nairun1,Fang Zuoming2ORCID

Affiliation:

1. Department of Physical Education, Guangzhou City University of Technology, Guangzhou 510800, Guangdong, China

2. College of Physical Education, Guangdong University of Education, Guangzhou 510800, Guangdong, China

Abstract

Computer vision is an interesting branch of artificial intelligence which is dedicated to how electronic devices can achieve the level of capabilities to perceive things just like ordinary human beings do. In order to solve the poor effect of video for the detection of target in football matches and the low accuracy of target tracking, this paper aims to make a deep exploration of the methods of video for the detection of target and tracking in football matches. The video moving for the detection of target method based on background model is used to extract the image in the background of the matching video which improves the light flow field. Secondly, the video differential image is acquired according to the difference of colors, the ghost target of the image in the video background model is scientifically determined, the ghost degree of the pixel points of the image is scientifically determined, and the flicker matrix of the target image is constructed. The number of pixels of the moving target is derived. A meanshift-based video target tracking algorithm is used in conjunction for the detection of target result to determine whether to track the target image until the overall video target tracking task is completed, move the central position of the target frame and background frame to the target position, select the best one to adapt to the target change, and determine whether to track the target image until the overall video target tracking task is completed. The simulation results suggest that the approach described in this study is capable of detecting and tracking moving objects, as well as improving target recognition and tracking accuracy.

Publisher

Hindawi Limited

Subject

General Mathematics,General Medicine,General Neuroscience,General Computer Science

Reference20 articles.

1. Detection and tracking of moving object in sports video based on improved Gaussian mixture model;Y. Gao;Modern Electronics Technique,2017

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3. Multi-target video tracking algorithm based on HSV color features;H. P. Zhou;Science Technology and Engineering,2017

4. An improved kalman object real-time detection and tracking algorithm;H. F. Zou;Computer Simulation,2022

5. Design of sports video moving for the detection of target and tracking system;X. Li;Electronic Design Engineering,2018

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