运动运动员运动检测的迁移学习模型

Wael Alghamdi
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引用次数: 0

摘要

识别和分析运动目标是一项重要的研究课题,因为计算机视觉在我们日常生活的许多方面都有应用,包括智能机器人、视频监控、医学教育、体育赛事和国防维护。这是因为它可能很难正确地分析和跟上移动的材料。本研究通过一段举重录像来探讨运动员的各种训练姿势。写这篇文章是为了帮助教练努力提高运动员在各自项目中的表现。提出了一种从运动电影中提取基本动作的方法。对感兴趣的不同主题进行分类是这种技术的基础。由于边缘检测方法的不足,目前的运动识别系统对运动员的检测效果不佳,这也是运动识别总体效果不佳的原因之一。这个缺陷是该系统在检测运动员方面不是很强大的原因之一。以下是促成这一结果的因素之一:事实上,目前的情况是这样的。结果表明,该系统在跟踪识别精度和收敛速度方面优于原有系统。该系统已进行了测试。该系统的研究结果是这一决定的基础。最后,分类结果表明,选择方法试图分离基本姿势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transfer learning model for the motion detection of sports players
Recognizing and analyzing moving targets is an important research subject since computer vision is employed in so many facets of our daily lives, including intelligent robotics, video surveillance, medical education, sporting events, and the maintenance of our national defense. This is because it may be difficult to properly analyse and keep up with moving materials. The various training postures of an athlete are explored in this study through the examination of a weightlifting video. This article was written to assist coaches in their efforts to improve the performance of their athletes in their respective sports. A technique for extracting essential poses from sports films has been proposed. The classification of different subjects of interest serves as the foundation for this technique. Because of its inadequate edge detection method, the current motion identification system does a bad job of detecting athletes, which is one of the reasons why it does a poor job of identifying motion in general. This flaw is one of the reasons why the system isn’t very strong at detecting athletes. The following was one of the factors that contributed to this outcome: in truth, the situation is currently in this state. The result of the newly developed system outperforms the prior system in terms of tracking recognition accuracy and convergence speed. The system was put to the test. The findings of the system’s study served as the foundation for this decision. Finally, the findings of the categorization reveal that the selection approach tries to separate fundamental postures.
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CiteScore
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