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Mining Semantic Correlation of Heterogeneous Multimedia Data for Cross-Media Retrieval

机译:跨媒体检索的异构多媒体数据语义相关性的挖掘

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摘要

Although multimedia objects such as images, audios and texts are of different modalities, there are a great amount of semantic correlations among them. In this paper, we propose a method of transductive learning to mine the semantic correlations among media objects of different modalities so that to achieve the cross-media retrieval. Cross-media retrieval is a new kind of searching technology by which the query examples and the returned results can be of different modalities, e.g., to query images by an example of audio. First, according to the media objects features and their co-existence information, we construct a uniform cross-media correlation graph, in which media objects of different modalities are represented uniformly. To perform the cross-media retrieval, a positive score is assigned to the query example; the score spreads along the graph and media objects of target modality or MMDs with the highest scores are returned. To boost the retrieval performance, we also propose different approaches of long-term and short-term relevance feedback to mine the information contained in the positive and negative examples.
机译:尽管诸如图像,音频和文本之类的多媒体对象具有不同的形式,但是它们之间存在大量的语义相关性。本文提出了一种跨语言学习的方法,以挖掘不同形式的媒体对象之间的语义相关性,从而实现跨媒体检索。跨媒体检索是一种新型的搜索技术,通过该技术,查询示例和返回的结果可以具有不同的模式,例如,通过音频示例查询图像。首先,根据媒体对象的特征及其共存信息,构造出统一的跨媒体关联图,其中不同形式的媒体对象被统一表示。为了执行跨媒体检索,将正分数分配给查询示例。得分沿图分布,并返回得分最高的目标模态或MMD的媒体对象。为了提高检索性能,我们还提出了长期和短期相关性反馈的不同方法,以挖掘正例和负例中包含的信息。

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