自动检测篮球视频中的“进球”片段

S. Nepal, Uma Srinivasan, G. Reynolds
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引用次数: 188

摘要

媒体和娱乐行业的进步,例如流媒体音频和数字电视,为管理大型视听收藏提出了新的挑战。从大型内容集合中高效检索是内容持有者业务模型的重要组成部分,这推动了对视听搜索和检索研究的需求。当前的内容管理系统支持使用低级特征进行检索,例如运动、颜色、纹理、节拍和响度。然而,对于这些系统的人类用户来说,低级功能通常没有什么意义,他们更喜欢使用高级语义描述或概念来识别内容。这在系统和用户之间造成了一个鸿沟,必须弥合这个鸿沟才能有效地使用这些系统。本文中提出的研究描述了我们在特定内容领域(体育视频)中弥合这一差距的方法。我们的方法基于许多自动特征检测技术,并结合通过人工观察体育镜头确定的启发式规则。这就产生了一组有趣的体育赛事的模型——目标分段——这些模型已经作为信息检索系统的一部分实现了。本文还介绍了将系统输出与人工确定的目标进行比较的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic detection of 'Goal' segments in basketball videos
Advances in the media and entertainment industries, for example streaming audio and digital TV, present new challenges for managing large audio-visual collections. Efficient and effective retrieval from large content collections forms an important component of the business models for content holders and this is driving a need for research in audio-visual search and retrieval. Current content management systems support retrieval using low-level features, such as motion, colour, texture, beat and loudness. However, low-level features often have little meaning for the human users of these systems, who much prefer to identify content using high-level semantic descriptions or concepts. This creates a gap between the system and the user that must be bridged for these systems to be used effectively. The research presented in this paper describes our approach to bridging this gap in a specific content domain, sports video. Our approach is based on a number of automatic techniques for feature detection used in combination with heuristic rules determined through manual observations of sports footage. This has led to a set of models for interesting sporting events-goal segments-that have been implemented as part of an information retrieval system. The paper also presents results comparing output of the system against manually identified goals.
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