Athlete Detection and Shadow Removal Algorithm in Track and Field Competition Based on Intelligent Optimization Algorithm

Q. Yao, Ying Zheng
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Abstract

With the rapid development of today's video technology, new video coding standards are constantly being developed and widely used. Motion estimation is an important part of the video coding system, which can effectively remove the time redundancy between adjacent images in video linkage, and significantly improve coding efficiency. A large number of motion estimation calculations have significantly increased the computational complexity of the video coding system, so finding simple and efficient motion estimation algorithms has always been a research topic in the field of video coding. The current research on athletes' sports evaluation algorithms aims to understand how to effectively link faster sports evaluation algorithms with these new technologies to improve coding. By consulting a large number of literature and questionnaire surveys, this paper gives a detailed overview of the algorithm for the detection and extraction of sports targets and the shadow detection of sports targets. It studies the statistics of athletes' detection accuracy in track and field competitions in a sports college and investigates the statistics on a fitness APP. Detected data on the frequency of male and female track athletes exercising several times a month, and a fitness center uses intelligent optimization algorithms to detect the exercise data of male and female athletes, and the satisfaction of male and female users with the detection experience. Experiments show that the intelligent optimization algorithm proposed in this paper can effectively combine the motion detection characteristics of passengers and athletes with the concrete algorithm, select the appropriate particles, capture the appropriate termination strategy, and calculate the complexity, in order to improve the accuracy of the investigation and reduce the calculation Complexity will develop the same control points and appropriate design constraints.
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基于智能优化算法的田径比赛运动员检测与阴影去除算法
随着当今视频技术的飞速发展,新的视频编码标准不断被开发和广泛应用。运动估计是视频编码系统的重要组成部分,可以有效去除视频联动中相邻图像之间的时间冗余,显著提高编码效率。大量的运动估计计算大大增加了视频编码系统的计算复杂度,因此寻找简单高效的运动估计算法一直是视频编码领域的研究课题。目前对运动员运动评估算法的研究旨在了解如何将更快的运动评估算法与这些新技术有效地联系起来,以改进编码。本文通过查阅大量文献和问卷调查,对运动目标的检测提取算法和运动目标的阴影检测算法进行了详细的概述。对某体育院校田径比赛运动员检测准确率的统计进行了研究,并对某健身APP的统计数据进行了调查。检测了男女田径运动员每月运动几次的频率数据,健身中心使用智能优化算法检测男女运动员的运动数据,以及男女用户对检测体验的满意度。实验表明,本文提出的智能优化算法可以有效地将乘客和运动员的运动检测特征与具体算法相结合,选择合适的粒子,捕获合适的终止策略,并计算复杂度,以提高调查的准确性,降低计算复杂度,将开发相同的控制点和适当的设计约束。
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