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High-Dimensional Image Data Sets Retrieval: Improving Accuracy Using a Weighted Relevance Feedback

机译:高维图像数据集检索:使用加权相关性反馈提高准确性

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摘要

The user's interaction with the retrieval engines, while seeking a particular image (or set of images) in large-scale databases, defines better his request. This interaction is essentially provided by a relevance feedback step. In fact, the semantic gap is increasing in a remarkable way due to the application of approximate nearest neighbor (ANN) algorithms aiming at resolving the curse of dimensionality. Therefore, an additional step of relevance feedback is necessary in order to get closer to the user's expectations in the next few retrieval iterations. In this context, this paper details a classification of the different relevance feedback techniques related to regionbased image retrieval applications. Moreover, a technique of relevance feedback based on reweighting regions of the query-image by selecting a set of negative examples is elaborated. Furthermore, the general context to carry out this technique which is the large-scale heterogeneous image collections indexing and retrieval is presented. In fact, the main contribution of the proposed work is affording efficient results with the minimum number of relevance feedback iterations for high dimensional image databases. Experiments and assessments are carried out within an RBIR, system for "Wang" data set in order to prove the effectiveness of the proposed approaches.
机译:在大型数据库中查找特定图像(或一组图像)时,用户与检索引擎的交互会更好地定义他的请求。该交互基本上由相关性反馈步骤提供。实际上,由于旨在解决维数诅咒的近似最近邻(ANN)算法的应用,语义差距正以惊人的方式增加。因此,相关反馈的附加步骤是必需的,以便在接下来的几次检索迭代中更接近用户的期望。在这种情况下,本文详细介绍了与基于区域的图像检索应用程序相关的不同相关性反馈技术的分类。此外,阐述了一种通过选择一组否定示例基于查询图像的加权区域的相关性反馈的技术。此外,提出了实施该技术的一般背景,即大规模异类图像集合的索引和检索。实际上,所提出工作的主要贡献在于,在高维图像数据库中,以最少的相关性反馈迭代次数提供了有效的结果。为了证明所提出方法的有效性,在针对“ Wang”数据集的RBIR系统内进行了实验和评估。

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