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A Novel Semi-supervised Learning for Collaborative Image Retrieval

机译:用于协同图像检索的新型半监督学习

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Content-based image retrieval (CBIR) solutions with regular Euclidean metric usually cannot achieve satisfactory performance due to the semantic gap. Hence, relevance feedback has been adopted as a promising approach to improve the search performance. In this paper, we propose a novel idea of learning with historical relevance feedback log-data, and adopt a new methodology called"Collaborative Image Retrieval" (CIR). To effectively search the log data, we propose a novel semisupervised distance metric learning technique, called "Laplacian Regularized Metric Learning" (LRML), for learning robust distance metrics for CIR. Different from previous methods, the proposed LRML method integrates both log data and unlabeled data information through an effective graph regularization framework. We show that reliable metrics can be learned from real log data eventhey may be noisy and limited at the beginning stage of a CIR system.
机译:基于内容的图像检索(CBIR)解决方案具有常规欧几里德度量,通常不能达到由于语义间隙而令人满意的性能。因此,已采用相关性反馈作为提高搜索性能的有希望的方法。在本文中,我们提出了一种与历史相关反馈日志数据的学习的新想法,采用一种名为“协作图像检索”(CIR)的新方法。为了有效地搜索日志数据,我们提出了一种新颖的半质度距离度量学习技术,称为“拉普拉斯正规化度量学习”(LRML),用于学习CIR的鲁棒距离指标。与以前的方法不同,所提出的LRML方法通过有效的图形正则化框架集成了日志数据和未标记的数据信息。我们表明可以从真实的日志数据学习可靠的指标,数据EventHey可能是嘈杂的,并限制在CIR系统的开始阶段。

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