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Video co-summarization: Video summarization by visual co-occurrence

机译:视频共同摘要:视觉共同发生的视频概述

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We present video co-summarization, a novel perspective to video summarization that exploits visual co-occurrence across multiple videos. Motivated by the observation that important visual concepts tend to appear repeatedly across videos of the same topic, we propose to summarize a video by finding shots that co-occur most frequently across videos collected using a topic keyword. The main technical challenge is dealing with the sparsity of co-occurring patterns, out of hundreds to possibly thousands of irrelevant shots in videos being considered. To deal with this challenge, we developed a Maximal Biclique Finding (MBF) algorithm that is optimized to find sparsely co-occurring patterns, discarding less co-occurring patterns even if they are dominant in one video. Our algorithm is parallelizable with closed-form updates, thus can easily scale up to handle a large number of videos simultaneously. We demonstrate the effectiveness of our approach on motion capture and self-compiled YouTube datasets. Our results suggest that summaries generated by visual co-occurrence tend to match more closely with human generated summaries, when compared to several popular unsupervised techniques.
机译:我们展示了视频共同摘要,这是一种新颖的视频摘要视角,这些概述在多个视频中利用视觉共同发生。通过观察到,重要的视觉概念倾向于在同一主题的视频中反复出现,我们建议通过查找使用主题关键字收集的视频中最常见的镜头来总结视频。主要技术挑战正在处理共同发生模式的稀疏性,从数百个被考虑的视频中的数千次无关镜头。为了解决这一挑战,我们开发了一个最大的双峰发现(MBF)算法,这些算法经过优化,以寻找稀疏的共同发生模式,即使它们在一个视频中占主导地位,也丢弃了较少的共同发生模式。我们的算法与闭合更新并行化,因此可以轻松扩展以同时处理大量视频。我们展示了我们对运动捕获和自编译YouTube数据集的方法的有效性。我们的研究结果表明,与几种流行的无监督技术相比,视觉共同发生产生的摘要往往与人类产生的摘要更密切地匹配。

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