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Relevance Feedback in Image Retrieval: A New Approach using Positive and Negative Examples

机译:图像检索中的相关反馈:使用正面和否定例子的新方法

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Relevance feedback has attracted the attention of many authors in image retrieval. However, in most work, only positive example has been considered. We think that negative example can be highly useful to better model the user's needs ans specificities. In this paper, we introduce a new relevance feedback model that combines positive and negative examples for query processing and refinement. We start by explaining how negative example can help mitigating many problems in image retrieval such as similarity measures definition and feature selection. Then, we propose a new relevance feedback approach that uses positive example to perform generalization and negative example to perform specialization. When the query contains both positive and negative examples, it is processed in two steps. In the first step, only positive example is considered in order to reduce the heterogeneity of the set of images that participate in retrieval. Then, the second step considers the difference between positive and negative examples and acts on the images retained in the first step. Mathematically, the problem is formulated as simultaneously minimizing intra variance of positive and negative examples, and maximizing inter varicance. The proposed algorithm was implemented in our image retrieval system "Atlas" and tested on a collection of 10.000 images. We carried out some performance evaluation and the results were promising.
机译:相关性反馈引起了图像检索中许多作者的注意。然而,在大多数工作中,只考虑了积极的例子。我们认为,负面示例可以对更好的模型来说是非常有用的,用户的需要AS特异性。在本文中,我们介绍了一个新的相关反馈模型,它结合了查询处理和改进的正面和否定例子。我们首先解释负面示例如何帮助减轻图像检索中的许多问题,例如相似度测量定义和特征选择。然后,我们提出了一种新的相关反馈方法,它使用积极的示例来执行泛化和否定示例以进行专业化。当查询包含正和否定示例时,它以两个步骤处理。在第一步中,仅考虑肯定示例以减少参与检索的一组图像的异质性。然后,第二步骤考虑正极和否定示例之间的差异,并在第一步中保留的图像上的作用。在数学上,该问题被制定为同时最小化正和负例的帧内方差,并最大化差异。该算法在我们的图像检索系统“Atlas”中实现并在10.000个图像的集合上进行了测试。我们进行了一些绩效评估,结果是有前途的。

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