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From Keyframes to Key Objects: Video Summarization by Representative Object Proposal Selection

机译:从关键帧到关键对象:通过代表性对象提案选择进行视频汇总

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We propose to summarize a video into a few key objects by selecting representative object proposals generated from video frames. This representative selection problem is formulated as a sparse dictionary selection problem, i.e., choosing a few representatives object proposals to reconstruct the whole proposal pool. Compared with existing sparse dictionary selection based representative selection methods, our new formulation can incorporate object proposal priors and locality prior in the feature space when selecting representatives. Consequently it can better locate key objects and suppress outlier proposals. We convert the optimization problem into a proximal gradient problem and solve it by the fast iterative shrinkage thresholding algorithm (FISTA). Experiments on synthetic data and real benchmark datasets show promising results of our key object summarization approach in video content mining and search. Comparisons with existing representative selection approaches such as K-mediod, sparse dictionary selection and density based selection validate that our formulation can better capture the key video objects despite appearance variations, cluttered backgrounds and camera motions.
机译:我们建议通过选择从视频帧生成的代表性对象建议,将视频总结为几个关键对象。该代表性选择问题被公式化为稀疏词典选择问题,即,选择一些代表性的对象提案以重建整个提案库。与现有的基于稀疏字典选择的代表选择方法相比,我们的新公式可以在选择代表时将对象提议先验和位置先验纳入特征空间。因此,它可以更好地定位关键对象并抑制异常提议。我们将优化问题转换为近端梯度问题,并通过快速迭代收缩阈值算法(FISTA)对其进行求解。在合成数据和真实基准数据集上进行的实验表明,我们在视频内容挖掘和搜索中的关键对象汇总方法具有可喜的成果。与现有的代表性选择方法(例如K型,稀疏字典选择和基于密度的选择)进行比较,验证了我们的公式可以更好地捕获关键视频对象,尽管出现外观变化,背景混乱和相机运动的情况。

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