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K-Nearest Neighbors directed synthetic images injection

机译:K近邻定向合成图像注入

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摘要

It is widely acknowledged that good performances of content-based image retrieval systems can be attained by adopting relevance feedback mechanisms. One of the main difficulties in exploiting relevance information is the availability of few relevant images, as users typically label a few dozen of images, the majority of them often being non-relevant to user's needs. In order to boost the learning capabilities of relevance feedback techniques, this paper proposes the creation of points in the feature space which can be considered as representation of relevant images. The new points are generated taking into account not only the available relevant points in the feature space, but also the relative positions of non-relevant ones. This approach has been tested on a relevance feedback technique, based on the Nearest-Neighbor classification paradigm. Reported experiments show the effectiveness of the proposed technique relatively to precision and recall.
机译:广泛公认的是,通过采用相关性反馈机制,可以实现基于内容的图像检索系统的良好性能。利用相关信息的主要困难之一是很少有相关图像,因为用户通常会标记几十个图像,其中大多数图像通常与用户需求无关。为了提高相关反馈技术的学习能力,本文提出了在特征空间中创建点的方法,这些点可以视为相关图像的表示。不仅考虑要素空间中可用的相关点,而且考虑不相关点的相对位置,都会生成新点。该方法已经在基于最近邻居分类范例的相关性反馈技术上进行了测试。报道的实验表明,所提出的技术相对于精度和召回率是有效的。

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