Tracking algorithm of snowboard target in intelligent system

Author:

Li Zhipeng1,Li Xiaolan2,Shi Ming1,Song Wenli3,Zhao Guowei4,Yang Ruizhu3,Li Shangbin5

Affiliation:

1. Harbin Sports University, Winter Olympic College, Harbin, China

2. Department of Physical Education, Harbin Engineering University, Harbin, China

3. Harbin Sports University, Physical Education and Training Institute, Harbin, China

4. Harbin Sports University, College of Sports Humanities and Social Sciences, Harbin, China

5. Harbin Engineering University, Harbin, China

Abstract

Snowboarding is a kind of sport that takes snowboarding as a tool, swivels and glides rapidly on the specified slope line, and completes all kinds of difficult actions in the air. Because the sport is in the state of high-speed movement, it is difficult to direct guidance during the sport, which is not conducive to athletes to find problems and correct them, so it is necessary to track the target track of snowboarding. The target tracking algorithm is the main solution to this task, but there are many problems in the existing target tracking algorithm that have not been solved, especially the target tracking accuracy in complex scenes is insufficient. Therefore, based on the advantages of the mean shift algorithm and Kalman algorithm, this paper proposes a better tracking algorithm for snowboard moving targets. In the method designed in this paper, in order to solve the problem, a multi-algorithm fusion target tracking algorithm is proposed. Firstly, the SIFT feature algorithm is used for rough matching to determine the fuzzy position of the target. Then, the good performance of the mean shift algorithm is used to further match the target position and determine the exact position of the target. Finally, the Kalman filtering algorithm is used to further improve the target tracking algorithm to solve the template trajectory prediction under occlusion and achieve the target trajectory tracking algorithm design of snowboarding.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference18 articles.

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