板球视频事件的时间分类

N. Harikrishna, S. Satheesh, S. Sriram, K. S. Easwarakumar
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引用次数: 29

摘要

今天的视频搜索使用围绕视频的元数据,而忽略了其语义内容。多年来,人们对体育视频内容的索引和浏览进行了大量研究。在这项工作中,我们提出了一种新的方法来分类板球视频中的事件,从而总结其视觉内容。该方法将板球视频分割成多个镜头,并识别其中的视觉内容。利用序列模式挖掘和支持向量机技术,将镜头序列划分为RUN、four、SIX和OUT四个事件。然后根据用户提供的参数对板球视频进行总结。该系统的性能已经在许多板球视频片段上进行了测试,发现准确率达到87.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal classification of events in cricket videos
Video search today uses the metadata surrounding the video, ignoring its semantic content. Over the years, a lot of research has gone into indexing and browsing of sports video content. In this work, we present a novel approach for classification of events in cricket videos and thus, summarize its visual content. The proposed method segments a cricket video into shots and identifies the visual content in them. Using sequential pattern mining and support vector machine, we classify the sequence of shots into four events, namely RUN, FOUR, SIX and OUT. The cricket video is then summarized based on user-supplied parameters. The performance of the system has been tested on a number of cricket video clips and was found to have an accuracy of 87.8%.
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