IEEE Trans Image Process. 2014 Jun;23(6):2704-18. doi: 10.1109/TIP.2014.2320814.
Automatic video summarization is indispensable for fast browsing and efficient management of large video libraries. In this paper, we introduce an image feature that we refer to as heterogeneity image patch (HIP) index. The proposed HIP index provides a new entropy-based measure of the heterogeneity of patches within any picture. By evaluating this index for every frame in a video sequence, we generate a HIP curve for that sequence. We exploit the HIP curve in solving two categories of video summarization applications: key frame extraction and dynamic video skimming. Under the key frame extraction frame-work, a set of candidate key frames is selected from abundant video frames based on the HIP curve. Then, a proposed patch-based image dissimilarity measure is used to create affinity matrix of these candidates. Finally, a set of key frames is extracted from the affinity matrix using a min–max based algorithm. Under video skimming, we propose a method to measure the distance between a video and its skimmed representation. The video skimming problem is then mapped into an optimization framework and solved by minimizing a HIP-based distance for a set of extracted excerpts. The HIP framework is pixel-based and does not require semantic information or complex camera motion estimation. Our simulation results are based on experiments performed on consumer videos and are compared with state-of-the-art methods. It is shown that the HIP approach outperforms other leading methods, while maintaining low complexity.
自动视频摘要对于快速浏览和有效管理大型视频库是必不可少的。在本文中,我们引入了一种图像特征,我们称之为异构图像补丁(HIP)索引。所提出的 HIP 索引为任何图片内的补丁的异构性提供了一种新的基于熵的度量。通过为视频序列中的每一帧评估该索引,我们为该序列生成一个 HIP 曲线。我们利用 HIP 曲线解决两类视频摘要应用:关键帧提取和动态视频浏览。在关键帧提取框架下,根据 HIP 曲线从大量视频帧中选择一组候选关键帧。然后,使用基于补丁的图像相似度度量来创建这些候选者的相似性矩阵。最后,使用基于最小-最大的算法从相似性矩阵中提取一组关键帧。在视频浏览中,我们提出了一种测量视频与其浏览表示之间距离的方法。视频浏览问题然后被映射到优化框架中,并通过最小化一组提取摘录的基于 HIP 的距离来解决。HIP 框架是基于像素的,不需要语义信息或复杂的相机运动估计。我们的模拟结果基于对消费者视频的实验,并与最先进的方法进行了比较。结果表明,HIP 方法在保持低复杂度的同时,优于其他领先方法。