首页> 外文会议>2011 Canadian Conference on Computer and Robot Vision >To Watch or Not to Watch: Video Summarization with Explicit Duplicate Elimination
【24h】

To Watch or Not to Watch: Video Summarization with Explicit Duplicate Elimination

机译:观看或不观看:显式重复消除的视频摘要

获取原文

摘要

Video summarization is the process in which we extract key frames to form a storyboard representing the content of a video sequence. When asked to select images representing a video sequence, users attempt to find images related to the subject of the video. For the computer, such semantic analysis is a very hard problem. Still, it is possible to objectively identify the individual scenes from a sequence to extract a single key frame summarizing each scene. We propose a recursive method that broadly identifies shots in the sequence and cluster them in possible scenes via global image features. Shot boundary are usually blurry and faded and are removed along with the neighboring frames from the summary construction. A key frame is selected to represent each cluster before recursively analyzing its content. The key frames included in the hierarchical representation are analyzed for redundancy using local SURF features cite{surf}. Key points enable the recognition of similar scene elements in the key frames, efficiently eliminating redundant information. The whole method is interactive: the user select the number of key frames to extract and the recursion depths to explore. The flexibility gained from the hierarchical representation allows the user to explore the key frames with a variable level of detail in an intuitive manner.
机译:视频摘要是提取关键帧以形成表示视频序列内容的情节提要的过程。当要求选择代表视频序列的图像时,用户尝试查找与视频主题有关的图像。对于计算机而言,这种语义分析是一个非常困难的问题。仍然可以从序列中客观地识别各个场景,以提取概括每个场景的单个关键帧。我们提出一种递归方法,该方法广泛地识别序列中的镜头,并通过全局图像特征将它们聚类在可能的场景中。镜头边界通常是模糊和褪色的,并且会与摘要构造中的相邻帧一起删除。在递归分析其内容之前,选择一个关键帧来表示每个群集。使用局部SURF功能cite {surf}对分层表示中包含的关键帧进行了冗余分析。关键点能够识别关键帧中的相似场景元素,从而有效地消除了冗余信息。整个方法是交互式的:用户选择要提取的关键帧数和要探索的递归深度。从分层表示中获得的灵活性允许用户以直观的方式探索具有可变详细程度的关键帧。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号