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On-line knowledge- and rule-based video classification system for video indexing and dissemination

机译:基于知识和规则的在线视频分类系统,用于视频索引和分发

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Current information and communication technologies provide the infrastructure to transport bits anywhere, but do not indicate how to easily and precisely access and/or route information at the semantic level. To facilitate intelligent access to the rich multimedia data over the Internet, we develop an on-line knowledge- and rule-based video classification system that supports automatic "indexing" and "filtering" based on the semantic concept hierarchy. This paper investigates the use of video and audio content analysis, feature extraction and clustering techniques for further video semantic concept classification. A supervised rule-based video classification system is proposed using video automatic segmentation, annotation and summarization techniques for seamless information browsing and updating. In the proposed system, a real-time scene-change detection proxy performs an initial video-structuring process by splitting a video clip into scenes. Motional, visual and audio features are extracted in real-time for every detected scene by using on-line feature-extraction proxies. Higher semantics are then derived through a joint use of low-level features along with classification rules in the knowledge base. Classification rules are derived through a supervised learning process that relies on some representative samples from each semantic category. An indexing and filtering process can now be built using the semantic concept hierarchy to personalize multimedia data based on users' interests. In real-time filtering, multiple video streams are blocked, combined, or sent to certain channels depending on whether or not the video streams are matched with the user's profile. We have extensively experimented and evaluated the classification and filtering techniques using basketball sports video data. In particular, in our experiment, the basketball video structure is examined and categorized into different classes according to distinct motional, visual and audio characteristics features by a rule-based classifier. The concept hierarchy describing the motional/visual/audio feature descriptors and their statistical relationships are reported in this paper along with detailed experimental results using on-line sports videos.
机译:当前的信息和通信技术提供了将位传输到任何地方的基础结构,但是没有指出如何在语义级别轻松而精确地访问和/或路由信息。为了促进通过Internet智能访问丰富的多媒体数据,我们开发了基于知识和规则的在线视频分类系统,该系统支持基于语义概念层次结构的自动“索引”和“过滤”。本文研究了视频和音频内容分析,特征提取和聚类技术在进一步的视频语义概念分类中的应用。提出了一种基于规则的基于监督的视频分类系统,该系统使用视频自动分割,注释和摘要技术进行无缝信息浏览和更新。在所提出的系统中,实时场景变化检测代理通过将视频剪辑分成场景来执行初始视频构造过程。通过使用在线特征提取代理,可以为每个检测到的场景实时提取运动,视觉和音频特征。然后,通过联合使用低级功能以及知识库中的分类规则来获得更高的语义。分类规则是通过监督学习过程得出的,该学习过程依赖于每个语义类别中的一些代表性样本。现在可以使用语义概念层次结构建立索引和过滤过程,以根据用户的兴趣个性化多媒体数据。在实时过滤中,根据视频流是否与用户的配置文件匹配,将多个视频流阻止,合并或发送到某些频道。我们已经使用篮球运动视频数据对分类和过滤技术进行了广泛的实验和评估。特别地,在我们的实验中,基于规则的分类器根据不同的运动,视觉和音频特征对篮球视频结构进行检查并将其分类为不同的类别。本文报道了描述运动/视觉/音频特征描述符及其统计关系的概念层次结构,以及使用在线体育视频的详细实验结果。

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