Personalized video summarization with human in the loop

Bohyung Han, Jihun Hamm, Jack Sim
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引用次数: 36

Abstract

In automatic video summarization, visual summary is constructed typically based on the analysis of low-level features with little consideration of video semantics. However, the contextual and semantic information of a video is marginally related to low-level features in practice although they are useful to compute visual similarity between frames. Therefore, we propose a novel video summarization technique, where the semantically important information is extracted from a set of keyframes given by human and the summary of a video is constructed based on the automatic temporal segmentation using the analysis of inter-frame similarity to the keyframes. Toward this goal, we model a video sequence with a dissimilarity matrix based on bidirectional similarity measure between every pair of frames, and subsequently characterize the structure of the video by a nonlinear manifold embedding. Then, we formulate video summarization as a variant of the 0–1 knapsack problem, which is solved by dynamic programming efficiently. The effectiveness of our algorithm is illustrated quantitatively and qualitatively using realistic videos collected from YouTube.
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个性化的视频总结与人在循环
在自动视频摘要中,视觉摘要通常是基于对底层特征的分析而构建的,很少考虑视频语义。然而,视频的上下文和语义信息在实践中与底层特征的关系不大,尽管它们对计算帧之间的视觉相似性很有用。因此,我们提出了一种新的视频摘要技术,该技术从人类给出的一组关键帧中提取语义上重要的信息,并利用帧间与关键帧的相似度分析,在自动时间分割的基础上构建视频摘要。为此,我们利用基于每对帧之间的双向相似性度量的不相似矩阵来建模视频序列,然后通过非线性流形嵌入来表征视频的结构。然后,我们将视频摘要化为0-1背包问题的一个变体,并利用动态规划有效地解决了该问题。利用从YouTube上收集的真实视频,定量和定性地说明了我们算法的有效性。
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