Video summarization based on Subclass Support Vector Data Description

V. Mygdalis, Alexandros Iosifidis, A. Tefas, I. Pitas
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引用次数: 15

Abstract

In this paper, we describe a method for video summarization that operates on a video segment level. We formulate this problem as the one of automatic video segment selection based on a learning process that employs salient video segment paradigms. We design an hierarchical learning scheme that consists of two steps. At the first step, an unsupervised process is performed in order to determine salient video segment types. The second step is a supervised learning process that is performed for each of the salient video segment type independently. For the latter case, since only salient training examples are available, the problem is stated as an one-class classification problem. In order to take into account subclass information that may appear in the video segment types, we introduce a novel formulation of the Support Vector Data Description method that exploits subclass information in its optimization process. We evaluate the proposed approach in three Hollywood movies, where the performance of the proposed Subclass SVDD (SSVDD) algorithm is compared with that of related methods. Experimental results show that the adoption of both hierarchical learning and the proposed SSVDD method contribute to the final classification performance.
基于子类支持向量数据描述的视频摘要
在本文中,我们描述了一种在视频片段级别上操作的视频摘要方法。我们将此问题表述为基于学习过程的自动视频片段选择问题,该过程采用了显著的视频片段范式。我们设计了一个由两个步骤组成的分层学习方案。在第一步,执行一个无监督的过程,以确定显著视频片段类型。第二步是一个监督学习过程,对每个突出的视频片段类型独立执行。对于后一种情况,由于只有显著的训练样例可用,因此将问题声明为单类分类问题。为了考虑视频片段类型中可能出现的子类信息,我们引入了一种新的支持向量数据描述方法,该方法在优化过程中利用了子类信息。我们在三部好莱坞电影中评估了所提出的方法,并将所提出的子类SVDD (SSVDD)算法与相关方法的性能进行了比较。实验结果表明,采用分层学习和所提出的SSVDD方法都有助于最终的分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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