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Keyframe-based Video Summarization with Human in the Loop

机译:基于关键帧的循环中的网络汇总

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In this work, we focus on the popular keyframe-based approach for video summarization. Keyframes represent important and diverse content of an input video and a summary is generated by temporally expanding the keyframes to key shots which are merged to a continuous dynamic video summary. In our approach, keyframes are selected from scenes that represent semantically similar content. For scene detection, we propose a simple yet effective dynamic extension of a video Bag-of-Words (BoW) method which provides over segmentation (high recall) for keyframe selection. For keyframe selection, we investigate two effective approaches: local region descriptors (visual content) and optical flow descriptors (motion content). We provide several interesting findings. 1) While scenes (visually similar content) can be effectively detected by region descriptors, optical flow (motion changes) provides better keyframes. 2) However, the suitable parameters of the motion descriptor based keyframe selection vary from one video to another and average performances remain low. To avoid more complex processing, we introduce a human-in-the-loop step where user selects keyframes produced by the three best methods. 3) Our human assisted and learning-free method achieves superior accuracy to learning-based methods and for many videos is on par with average human accuracy.
机译:在这项工作中,我们专注于视频摘要的流行基于关键帧的方法。关键帧代表输入视频的重要且不同的内容,并通过在将关键帧扩展到键截图的关键帧来生成摘要,该概要是合并到连续动态视频摘要的关键帧。在我们的方法中,关键帧选中从表示语义相似内容的场景中选择。对于场景检测,我们提出了一种简单但有效的动态扩展,用于提供关键帧选择的分段(高召回)的视频袋(Bow)方法。对于关键帧选择,我们调查了两个有效的方法:局部区域描述符(视觉内容)和光学流量描述符(运动内容)。我们提供了几个有趣的调查结果。 1)虽然可以通过区域描述符有效地检测到场景(视觉上类似的内容),但光学流量(运动改变)提供更好的关键帧。 2)然而,基于运动描述符的基于运动描述符的合适参数从一个视频变化到另一个视频,并且平均性能保持低。为避免更复杂的处理,我们介绍了一个循环的步骤,其中用户选择由三种最佳方法产生的关键帧。 3)我们的人类辅助和学习方法可以实现基于学习的方法的卓越准确性,并且对于众多视频,均为平均人力学准确性。

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