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Passive-aggressive Online Learning for Relevance Feedback in Content based Image Retrieval

机译:基于内容的图像检索中的相关反馈的被动攻击在线学习

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The increasing availability of large archives of digital images has pushed the need for effective image retrieval systems. Relevance Feedback (RF) techniques, where the user is involved in an iterative process to refine the search, have been recently formulated in terms of classification paradigms in low-level feature spaces. Two main issues arises in this formulation, namely the small size of the training set, and the unbalance between the class of relevant images and all other non-relevant images. To address these issues, in this paper we propose to formulate the RF paradigm in terms of Passive-Aggressive on-line learning approaches. These approaches are particularly suited to be implemented in RF because of their iterative nature, which allows further improvements in the image search process. The reported results show that the performances attained by the proposed algorithm are comparable, and in many cases higher, than those attained by other RF approaches.
机译:越来越多的数字图像档案的可用性已经推动了对有效图像检索系统的需求。相关性反馈(RF)技术,其中用户参与迭代过程以优化搜索,最近已经在低级特征空间中的分类范例方面配制。这项制定中出现了两个主要问题,即培训集的小尺寸,以及相关图像类与所有其他非相关图像之间的不平衡。为了解决这些问题,在本文中,我们建议在被动侵略性的在线学习方法方面制定射频范式。由于其迭代性质,这些方法特别适合于RF在RF中实现,这允许在图像搜索过程中进一步改进。据报道的结果表明,所提出的算法实现的性能是可比的,并且在许多情况下比其他RF方法所获得的措施更高。

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