HSA-RNN:用于视频摘要的层次结构自适应RNN

Bin Zhao, Xuelong Li, Xiaoqiang Lu
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引用次数: 155

摘要

尽管近年来视频摘要取得了巨大的成功,但很少有方法意识到视频结构对摘要结果的影响。我们知道,视频数据遵循层次结构,即一个视频由多个镜头组成,一个镜头由多个帧组成。一般来说,镜头为人们理解视频内容提供了活动级别的信息。而现有的摘要方法很少关注镜头分割过程。它们通过一些琐碎的策略生成镜头,例如固定长度分割,这可能会破坏视频数据的底层层次结构,进一步降低生成摘要的质量。为了解决这个问题,我们提出了一种结构自适应视频摘要方法,该方法将镜头分割和视频摘要集成到一个层次结构自适应RNN中,称为HSA-RNN。我们在四个流行的数据集,即SumMe, TVsum, CoSum和VTW上评估了所提出的方法。实验结果证明了HSA-RNN在视频摘要任务中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HSA-RNN: Hierarchical Structure-Adaptive RNN for Video Summarization
Although video summarization has achieved great success in recent years, few approaches have realized the influence of video structure on the summarization results. As we know, the video data follow a hierarchical structure, i.e., a video is composed of shots, and a shot is composed of several frames. Generally, shots provide the activity-level information for people to understand the video content. While few existing summarization approaches pay attention to the shot segmentation procedure. They generate shots by some trivial strategies, such as fixed length segmentation, which may destroy the underlying hierarchical structure of video data and further reduce the quality of generated summaries. To address this problem, we propose a structure-adaptive video summarization approach that integrates shot segmentation and video summarization into a Hierarchical Structure-Adaptive RNN, denoted as HSA-RNN. We evaluate the proposed approach on four popular datasets, i.e., SumMe, TVsum, CoSum and VTW. The experimental results have demonstrated the effectiveness of HSA-RNN in the video summarization task.
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