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Application of fuzzy rule-based classifier to CBIR in comparison with other classifiers

机译:基于模糊规则的分类器在其他分类器比较中将基于基于规则的分类器应用于CBIR

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At present a great deal of research is being done in different aspects of Content-Based Image Retrieval (CBIR). Image classification is one of the most important tasks that must be dealt with in image DB as an intermediate stage prior to further image retrieval. The issue we address is an evolution from the simplest to more complicated classifiers. Firstly, there is the most intuitive one based on a comparison of the features of a classified object with a class pattern. Next, the paper presents decision trees and Na?ve Bayes as another option in a great number of classifying methods. Lastly, to assign the most ambiguous objects we have built fuzzy rule-based classifiers. We propose how to find the ranges of membership functions for linguistic values for fuzzy rule-based classifiers according to crisp attributes. Experiments demonstrate the precision of each classifier for the crisp image data in our CBIR. Furthermore, these results are used to describe a spatial object location in the image and to construct a search engine taking into account data mining.
机译:目前正在基于内容的图像检索(CBIR)的不同方面进行了大量的研究。图像分类是在进一步图像检索之前必须在图像DB中处理的最重要任务之一。我们地址的问题是最简单到更复杂的分类器的演变。首先,基于具有类模式的分类对象的特征的比较,存在最直观的。接下来,本文以大量分类方法为另一种选择,将决策树和Na?ve贝斯呈现为另一种选择。最后,要分配我们建立模糊规则的分类器的最模糊的对象。我们提出了如何根据Crisp属性找到基于模糊规则的分类器的语言值的成员函数范围。实验证明了每个分类器在CBIR中的清晰图像数据的精度。此外,这些结果用于描述图像中的空间对象位置,并考虑到数据挖掘的搜索引擎。

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