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Deep Cross-Modal Face Naming for People News Retrieval

机译:深度跨莫德脸命名为人们新闻检索

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摘要

How to integrate multimodal information sources for face naming in multimodal news is a hot and yet challenging problem. A novel deep cross-modal face naming scheme is developed in this paper to facilitate more effective people news retrieval for large-scale multimodal news. This scheme integrates deep multimodal analysis, cross-modal correlation learning, and multimodal information mining, in which the efficient naming mechanism aims to cluster the deep features of different modalities into a common space to explore their inter-related correlations, and a special Web mining pattern is designed to optimize the name-face matching for rare non-celebrity. Such a cross-modal face naming model can be treated as a problem of bi-media semantic mapping and modeled as an inter-related correlation distribution over deep representations of multimodal news, in which the most important is to create more effective cross-modal name-face correlation and measure to what degree they are correlated. The experiments on a large number of public data from Yahoo! News have obtained very positive results and demonstrated the effectiveness of the proposed model.
机译:如何整合多模式信息来源,以便在多模式新闻中的面部命名是一个炎热而挑战的问题。本文开发了一种新的深层跨模型脸部命名方案,以促进更有效的人员新闻检索,用于大规模多模式新闻。该方案集成了深度多模态分析,跨模型相关学习和多模式信息挖掘,其中有效的命名机制旨在将不同方式的深度特征集中成共同的空间以探索其与相关的相关性相关,以及特殊的网络挖掘图案旨在优化罕见的非名人的名称匹配。这种跨模型面部命名模型可以被视为双媒体语义映射的问题,并以多模式新闻的深刻表示相关的相关相关分布,其中最重要的是创建更有效的跨模态名称 - 接口相关性和测量它们与多大程度相关的。来自雅虎的大量公共数据的实验!新闻已经获得了非常积极的结果,并证明了拟议模型的有效性。

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