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Unsupervised clustering of dominant scenes in sports video

机译:运动视频中主要场景的无监督聚类

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摘要

We propose a new and efficient approach for clustering dominant scenes in sports video. To perform clustering in an unsupervised manner, we devise a recursive peer-group filtering (PGF) scheme to identify prototypical shots for each dominant scene, and examine time coverage of these prototypical shots to decide the number of dominant scenes for each sports video under analysis. To improve clustering efficiency, we employ principal component analysis and linear discriminant analysis to project high dimensional shot features to lower dimensional spaces suitable for classification. The main contribution of the paper lies in the formulation of clustering dominant scenes in sports video and the development of an efficient, unsupervised solution making use of PGF, time-coverage criterion, and subspace analysis. Experimental results obtained from various types of sports videos are presented to show the efficacy of the proposed approach.
机译:我们提出了一种新的,高效的方法来对体育视频中的主导场景进行聚类。为了以无监督的方式执行聚类,我们设计了一种递归对等组过滤(PGF)方案来识别每个主要场景的原型镜头,并检查这些原型镜头的时间覆盖范围,以确定每个被分析的体育视频的主要场景数量。为了提高聚类效率,我们使用主成分分析和线性判别分析将高尺寸镜头特征投射到适合分类的低尺寸空间。本文的主要贡献在于制定了体育视频中的主要场景的聚类,并利用PGF,时间覆盖标准和子空间分析开发了一种有效的,无监督的解决方案。提出了从各种类型的体育视频中获得的实验结果,以证明该方法的有效性。

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