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Attribute-enhanced metric learning for face retrieval

机译:属性增强的Face Retrieval度量学习

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Abstract Metric learning is a significant factor for media retrieval. In this paper, we propose an attribute label enhanced metric learning model to assist face image retrieval. Different from general cross-media retrieval, in the proposed model, the information of attribute labels are embedded in a hypergraph metric learning framework for face image retrieval tasks. The attribute labels serve to build a hypergraph, in which each image is abstracted as a vertex and is contained in several hyperedges. The learned hypergraph combines the attribute label to reform the topology of image similarity relationship. With the mined correlation among multiple facial attributes, the reformed metrics incorporates the semantic information in the general image similarity measure. We apply the metric learning strategy to both similarity face retrieval and interactive face retrieval. The proposed metric learning model effectively narrows down the semantic gap between human and machine face perception. The learned distance metric not only increases the precision of similarity retrieval but also speeds up the convergence distinctively in interactive face retrieval.
机译:抽象度量学习是媒体检索的重要因素。在本文中,我们提出了一个属性标签增强的度量学习模型,以帮助面部图像检索。与普通跨媒检索不同,在所提出的模型中,属性标签的信息嵌入在用于面部图像检索任务的超图度量学习框架中。属性标签用于构建一个超图,其中每个图像被抽象为顶点,并包含在几个Hyperedges中。学习的HyperGraph结合了属性标签来改革图像相似关系的拓扑。随着多个面部属性的挖掘相关性,改革的指标包含了一般图像相似度测量中的语义信息。我们将度量学习策略应用于相似性面临检索和交互式面部检索。该拟议的公制学习模型有效地缩小了人与机器脸部感知之间的语义差距。学习距离度量不仅增加了相似性检索的精度,而且还增加了交互式面部检索的融合。

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