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Combining positive and negative examples in relevance feedback for content-based image retrieval

机译:在相关性反馈中组合正例和负例以进行基于内容的图像检索

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In this paper, we address some issues related to the combination of positive and negative examples to improve the efficiency of image retrieval. We start by analyzing the relevance of the negative example and how it can be interpreted and utilized to mitigate certain problems in image retrieval, such as noise, miss, the page zero problem and feature selection. Then we propose a new relevance feedback approach that uses the positive example (PE) to perform generalization and the negative example (NE) to perform specialization. In this approach, a query containing both PE and NE is processed in two steps. The first step considers the PE alone, in order to reduce the set of images participating in retrieval to a more homogeneous subset. Then, the second step considers both PE and NE and acts on the images retained in the first step. Mathematically, relevance feedback is formulated as an optimization of the intra and inter variances of the PE and NE. The proposed relevance feedback algorithm was implemented in our image retrieval system, which we tested on a collection of more than 10,000 images. The experimental results show how the NE as considered in our model can contribute in improving the relevance of the images retrieved.
机译:在本文中,我们解决了一些与正例和负例相结合的问题,以提高图像检索的效率。我们首先分析否定示例的相关性,以及如何解释和利用它来减轻图像检索中的某些问题,例如噪声,遗漏,页面零问题和特征选择。然后,我们提出了一种新的相关性反馈方法,该方法使用正例(PE)进行概括,而负例(NE)进行专门化。用这种方法,分两个步骤处理包含PE和NE的查询。第一步仅考虑PE,以将参与检索的图像集减少为更均匀的子集。然后,第二步同时考虑PE和NE并作用于第一步中保留的图像。在数学上,相关性反馈被公式化为PE和NE的内部和内部方差的优化。所提出的相关性反馈算法已在我们的图像检索系统中实现,我们对10,000多个图像进行了测试。实验结果表明,在我们的模型中考虑的NE如何有助于提高检索到的图像的相关性。

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