直觉模糊否定及其在图像分类中的应用

A. Michalíková
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引用次数: 1

摘要

本文讨论了图像的分类问题。我们的具体问题是,我们需要将轮胎图像分类到选定的类中。这些类具有一些模式特征。在第一步中,图像被表示为向量。然后利用直觉模糊集理论计算向量各坐标的隶属度和非隶属度值;在[7]中,对图像的分类是根据所谓的Sim函数的值进行的,Sim函数定义为模式数据与图像数据之间的距离与模式数据与图像数据的补体之间的距离之比。采用特定直觉模糊否定法对图像数据进行补集。在[2]中提出了53个直觉模糊否定的列表。我们决定使用其中的一些否定来改进分类的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intuitionistic fuzzy negations and their use in image classification
In this paper, the problem of classification of images is discussed. Our specific problem is that we need to classify tire images into selected classes. The classes are characterized by some patterns. In the first step images are represented as the vectors. Then the membership and non-membership value to each coordinate of the vector is calculated and the theory of intuitionistic fuzzy sets is used. In [7] the classification of images was performed with respect to the valued of so called Sim function, which was defined as a ratio of distance between pattern data and image data and distance between pattern data and the complement of image data. The complement of image data was obtained by using specific intuitionistic fuzzy negation. In [2] a list of 53 intuitionistic fuzzy negations was presented. We have decided to use some of these negations to improve the results of classification.
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