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A New Adaptive Distance Computation Technique for Query-by-Multiple-Example System

机译:一种多实例查询的自适应距离计算新技术

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Query-By-One-Example (QBOE) is the traditional way of querying in content-based image retrieval (CBIR) system. However, as some recent research points out, QBOE method cannot get accurate result because only one image is not sufficient to express its semantics of the intended query. Therefore, Query-By-multiple-Example (QBME) method is proposed and adopted, in which query images are divided into groups according to relevance to target image class. In order to maximize major features and minimize minor ones, previous researches have introduced adaptive distance computation in QBME. These methods optimize query result compared to QBOE, but still have some defects. This paper proposes a new adaptive distance computation technique for QBME, which achieves higher performance than previous methods.
机译:单一实例查询(QBOE)是基于内容的图像检索(CBIR)系统中的传统查询方式。但是,正如最近的一些研究指出的那样,QBOE方法无法获得准确的结果,因为仅一张图像不足以表达其预期查询的语义。因此,提出并采用了按实例查询(QBME)方法,其中根据与目标图像类别的相关性将查询图像分为几组。为了最大化主要特征而最小化次要特征,先前的研究已经在QBME中引入了自适应距离计算。与QBOE相比,这些方法可优化查询结果,但仍存在一些缺陷。本文提出了一种新的QBME自适应距离计算技术,该技术比以前的方法具有更高的性能。

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