...
首页> 外文期刊>Wireless communications & mobile computing >Classification of Tennis Video Types Based on Machine Learning Technology
【24h】

Classification of Tennis Video Types Based on Machine Learning Technology

机译:基于机器学习技术的网球视频类型分类

获取原文
           

摘要

With the rapid development of online video data, how to find the required information has become an urgent problem to be solved. This article focuses on sports videos and studies video classification and content-based retrieval techniques. Its purpose is to establish a mark and index of video content and to promote user acquisition through computer processing, analysis, and understanding of video content. Video tennis classification has high research and application value. This article focuses on video tennis based on the selection of the basic frame of each shot and proposes an algorithm for classification of shots based on average grouping. Based on this, we use a color-coded spatial detection method to detect the type of tennis match. Then, it integrates the results of audiovisual analysis to identify and classify exciting events in tennis matches. According to statistics, although the number of people participating in tennis cannot enter the top ten, the number of spectators ranks fourth. Four tennis tournaments, masters, and crown tournaments are held every year around the world. Watching large-scale international tennis matches has become a pillar of leisure and vacation for many people. Tennis matches last from two hours to four hours or more, and there are countless large and small tennis matches around the world every year, so the number of tennis records created is staggering. And artificial intelligence technology is rarely used in tennis in the sports world (5%), but football has reached 50%. Therefore, when dealing with such a large amount of data, we urgently need to find a fast and effective video retrieval classification method to find the required information. The experiment of tennis video classification research based on machine learning technology proves that the accuracy of tennis video classification reaches 98%, so this system has high feasibility.
机译:随着在线视频数据的快速发展,如何找到所需信息已成为亟待解决的问题。本文侧重于体育视频和研究视频分类和基于内容的检索技术。其目的是通过计算机处理,分析和对视频内容的理解来建立视频内容的标记和指数,并促进用户采集。视频网球分类具有高研究和应用价值。本文重点介绍视频网球基于每个镜头的基本框架的选择,提出了基于平均分组拍摄的分类算法。基于此,我们使用颜色编码的空间检测方法来检测网球类型。然后,它集成了视听分析的结果,以识别和分类网球比赛中的令人兴奋的事件。据统计,虽然参与网球的人数不能进入前十名,但观众人数排名第四。四个网球锦标赛,大师和皇冠锦标赛每年都在全球举行。看大型国际网球比赛已成为许多人的休闲和度假柱。网球比赛最后从两个小时到四个小时或更长时间,每年都有无数的大型网球比赛,所以创造了令人惊叹的网球记录的数量。人工智能技术很少在体育世界(5%)的网球中使用,但足球已经达到50%。因此,在处理如此大量数据时,我们迫切需要找到一个快速有效的视频检索分类方法来查找所需信息。基于机器学习技术的网球视频分类研究的实验证明,网球视频分类的准确性达到98%,因此该系统具有很高的可行性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号