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Classifying advertising video by topicalizing high-level semantic concepts

机译:通过主题化高级语义概念对广告视频进行分类

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摘要

The recent proliferation of videos has driven the research into various applications, ranging from video analysis to indexing and retrieval. These applications greatly benefit from domain knowledge of videos. As a special kind of videos, classifying ad video is a key task because it allows automatic organization of videos according to categories or genres, and this further enables ad video indexing and retrieval. However, classifying ad video is challenging due to its unconstraint content and distinctive expression. While many studies focus on selecting ads relevant to the target videos, to the best of our knowledge, few focuses on ad video classification. To classify ad video, we propose a novel video representation that aims to capture the latent semantics of ad video in an unsupervised manner. In particular, this paper integrates the posterior occurrence probability between brand/logo information and the high-level object information into a latent Dirichlet allocation unified learning paradigm, named ppLDA. A topical representation for ad video is obtained by the proposed method, which can support category-related task. Our experiments on 10,111 real-world ad videos downloaded from Internet demonstrate that the proposed method could effectively differentiate ad videos.
机译:视频的最新发展推动了对各种应用的研究,从视频分析到索引和检索。这些应用程序极大地受益于视频的领域知识。作为一种特殊的视频,对广告视频进行分类是一项关键任务,因为它可以根据类别或流派自动组织视频,并且还可以对广告视频进行索引和检索。但是,由于广告视频内容不受限制且表达独特,因此对广告视频进行分类具有挑战性。据我们所知,尽管许多研究着重于选择与目标视频相关的广告,但很少有研究着眼于广告视频的分类。为了对广告视频进行分类,我们提出了一种新颖的视频表示形式,旨在以无监督的方式捕获广告视频的潜在语义。特别是,本文将品牌/徽标信息和高级对象信息之间的后发生概率集成到一个潜在的Dirichlet分配统一学习范例ppLDA中。通过所提出的方法获得了广告视频的主题表示,它可以支持与类别相关的任务。我们对从互联网上下载的10,111个现实世界广告视频的实验表明,该方法可以有效地区分广告视频。

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