Semantic analysis for video contents extraction—spotting by association in news video

Yuichi Nakamura, T. Kanade
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引用次数: 119

Abstract

Spotting by Association method for video analysis is a novel metliod to detect video segments with typical semantics. Video data contains various kinds of information through continuous images, natural language, and sound. For videos to be stored and retrieved in a Digital Library, it is essential to segment the video data into meaningful pieces. To detect meaningful segments, we need to identify the segment in each modality (video, language, and sound) that corresponds to the same story. For this purpose, we propose a new method for making correspondences between image clues detected by image analysis and Iangriage clries detected by natural language analysis. As a result, relevant video segments with sufficient informat ion froni every modality are obtained. We applied OUT nietliod to closed-captioned C N N Headline News. Video segments with important events, such as a public speech, meeting, or visit. are detc-cted fairly well.
面向视频内容提取的语义分析——新闻视频中的关联识别
视频分析中的关联点播方法是对具有典型语义的视频片段进行检测的一种新方法。视频数据通过连续图像、自然语言和声音等方式包含了各种信息。为了在数字图书馆中存储和检索视频,必须将视频数据分割成有意义的片段。为了检测有意义的片段,我们需要识别对应于同一故事的每种形态(视频、语言和声音)中的片段。为此,我们提出了一种将图像分析检测到的图像线索与自然语言分析检测到的图像线索进行对应的新方法。从而得到各模态信息充足的相关视频片段。我们将OUT周期应用于闭路字幕的cnn头条新闻。包含重要事件的视频片段,如公开演讲、会议或访问。很容易被发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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