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Logistic Regression Models for a Fast CBIR Method Based on Feature Selection

机译:基于特征选择的快速CBIR方法的Logistic回归模型

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Distance measures like the Euclidean distance have been the most widely used to measure similarities between feature vectors in the content-based image retrieval (CBIR) systems. However, in these similarity measures no assumption is made about the probability distributions and the local relevances of the feature vectors. Therefore, irrelevant features might hurt retrieval performance. Probabilistic approaches have proven to be an effective solution to this CBIR problem. In this paper, we use a Bayesian logistic regression model, in order to compute the weights of a pseudo-metric to improve its discriminatory capacity and then to increase image retrieval accuracy. The pseudo-metric weights were adjusted by the classical logistic regression model in [Ksantini et al, 2006]. The Bayesian logistic regression model was shown to be a significantly better tool than the classical logistic regression one to improve the retrieval performance. The retrieval method is fast and is based on feature selection. Experimental results are reported on the Zubud and WANG color image databases proposed by [Deselaers et ai, 2004].
机译:在基于内容的图像检索(CBIR)系统中,像欧几里得距离之类的距离度量已被最广泛地用于度量特征向量之间的相似性。但是,在这些相似性度量中,未对特征向量的概率分布和局部相关性做出任何假设。因此,不相关的功能可能会损害检索性能。事实证明,概率方法是解决CBIR问题的有效方法。在本文中,我们使用贝叶斯逻辑回归模型来计算伪度量的权重,以提高其判别能力,从而提高图像检索的准确性。伪度量权重由[Ksantini et al,2006]中的经典逻辑回归模型调整。与经典的Logistic回归模型相比,贝叶斯Logistic回归模型被证明是一种显着更好的工具,可以改善检索性能。检索方法快速且基于特征选择。在[Deselaers等,2004]提出的Zubud和WANG彩色图像数据库上报告了实验结果。

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