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A correlation graph approach for unsupervised manifold learning in image retrieval tasks

机译:用于图像检索任务中无监督流形学习的相关图方法

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摘要

Effectively measuring the similarity among images is a challenging problem in image retrieval tasks due to the difficulty of considering the dataset manifold. This paper presents an unsupervised manifold learning algorithm that takes into account the intrinsic dataset geometry for defining a more effective distance among images. The dataset structure is modeled in terms of a Correlation Graph (CG) and analyzed using Strongly Connected Components (SCCs). While the Correlation Graph adjacency provides a precise but strict similarity relationship, the Strongly Connected Components analysis expands these relationships considering the dataset geometry. A large and rigorous experimental evaluation protocol was conducted for different image retrieval tasks. The experiments were conducted in different datasets involving various image descriptors. Results demonstrate that the manifold learning algorithm can significantly improve the effectiveness of image retrieval systems. The presented approach yields better results in terms of effectiveness than various methods recently proposed in the literature. (C) 2016 Elsevier B.V. All rights reserved.
机译:由于难以考虑数据集流形,因此在图像检索任务中有效测量图像之间的相似性是一个具有挑战性的问题。本文提出了一种无监督的流形学习算法,该算法考虑了固有数据集的几何形状,以定义图像之间的更有效距离。数据集结构是根据相关图(CG)建模的,并使用强连接组件(SCC)进行了分析。尽管“关联图”邻接关系提供了精确但严格的相似关系,但是“强连接的组件”分析考虑了数据集的几何形状来扩展了这些关系。针对不同的图像检索任务进行了严格的大型实验评估协议。实验是在涉及各种图像描述符的不同数据集中进行的。结果表明,流形学习算法可以显着提高图像检索系统的有效性。与最近在文献中提出的各种方法相比,所提出的方法在有效性方面产生了更好的结果。 (C)2016 Elsevier B.V.保留所有权利。

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