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Video Corpus Annotation Using Active Learning

机译:使用主动学习的视频语料库注释

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Concept indexing in multimedia libraries is very useful for users searching and browsing but it is a very challenging research problem as well. Beyond the systems' implementations issues, semantic indexing is strongly dependent upon the size and quality of the training examples. In this paper, we describe the collaborative annotation system used to annotate the High Level Features (HLF) in the development set of TRECVID 2007. This system is web-based and takes advantage of Active Learning approach. We show that Active Learning allows simultaneously getting the most useful information from the partial annotation and significantly reducing the annotation effort per participant relatively to previous collaborative annotations.
机译:多媒体库中的概念索引对于用户搜索和浏览非常有用,但这也是一个非常具有挑战性的研究问题。除了系统的实现问题外,语义索引还强烈依赖于培训示例的大小和质量。在本文中,我们描述了用于对TRECVID 2007开发集中的高级功能(HLF)进行注释的协作注释系统。该系统基于Web,并利用了主动学习方法。我们表明,主动学习可以同时从部分注释中获取最有用的信息,并且相对于以前的协作注释,可以显着减少每个参与者的注释工作量。

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