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首页> 外文期刊>IEEE Transactions on Image Processing >Generalized Manifold-Ranking-Based Image Retrieval
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Generalized Manifold-Ranking-Based Image Retrieval

机译:基于广义流形排序的图像检索

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摘要

In this paper, we propose a general transductive learning framework named generalized manifold-ranking-based image retrieval (gMRBIR) for image retrieval. Comparing with an existing transductive learning method named MRBIR , our method could work well whether or not the query image is in the database; thus, it is more applicable for real applications. Given a query image, gMRBIR first initializes a pseudo seed vector based on neighborhood relationship and then spread its scores via manifold ranking to all the unlabeled images in the database. Furthermore, in gMRBIR, we also make use of relevance feedback and active learning to refine the retrieval result so that it converges to the query concept as fast as possible. Systematic experiments on a general-purpose image database consisting of 5 000 Corel images demonstrate the superiority of gMRBIR over state-of-the-art techniques.
机译:在本文中,我们提出了一个通用的跨语言学习框架,称为基于广义流形排序的图像检索(gMRBIR)。与现有的称为MRBIR的转导学习方法相比,无论查询图像是否在数据库中,我们的方法都能很好地工作。因此,它更适用于实际应用。给定查询图像,gMRBIR首先基于邻域关系初始化伪种子向量,然后通过流形排序将其分数分布到数据库中所有未标记的图像。此外,在gMRBIR中,我们还利用相关性反馈和主动学习来完善检索结果,从而使其尽可能快地收敛于查询概念。在由5 000张Corel图像组成的通用图像数据库上的系统实验证明了gMRBIR优于最新技术。

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