多媒体内容集群的语义标注

Jelena Tešić, John R. Smith
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引用次数: 8

摘要

在本文中,我们提出了一种标记多媒体内容聚类的新方法,该方法利用监督分类技术与无监督聚类相结合。最近的研究在广播新闻等视频内容的自动标注方面取得了重大成果。例如,强大的技术已经在NIST的TRECVID视频检索基准中得到了演示。然而,用户的信息需求通常跨越一系列语义概念。这些多媒体检索系统面临的挑战之一是如何组织视频数据,使用户能够最有效地在视频数据集的语义空间中导航。聚类是视频数据组织的一个重要工具。然而,当聚类结果没有被标记时,就不能有效地利用它们。我们建议通过聚合自动标记语义来构建聚类。我们提出并比较了四种标记聚类的技术,并评估了与人类标记的基础真值相比的性能。我们给出了从TRECVID-2005视频数据集中获得的BBC库存镜头的聚类标记结果的示例
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Semantic Labeling of Multimedia Content Clusters
In this paper we present a novel approach for labeling clusters of multimedia content that leverages supervised classification techniques in conjunction with unsupervised clustering. Recent research has produced significant results for automatic tagging of video content such as broadcast news. For example, powerful techniques have been demonstrated in the context of the NIST TRECVID video retrieval benchmark. However, the information needs of users typically span a range of semantic concepts. One of the challenges of these multimedia retrieval systems is to organize the video data in such a way that allows the user to most efficiently navigate the semantic space for the video data set. One important tool for video data organization is clustering. However, clustering results cannot be leveraged effectively when they are not labeled. We propose to build on clustering by aggregating the automatically tagged semantics. We propose and compare four techniques for labeling the clusters and evaluate the performance compared to human labeled ground-truth. We present examples of the cluster labeling results obtained on the BBC stock shots from the TRECVID-2005 video data set
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