基于回归模型和粒度特征的有序纹理图像分类

M. Khatun, A. Gray, S. Marshall
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引用次数: 4

摘要

图像的粒度结构信息在图像纹理分析和分类中得到了广泛的应用。本文提出了一种对纹理图像进行分类的方法,该方法使用多项式回归将粒度矩表示为类标号的函数。为每个单独的时刻建立单独的模型,并结合起来对新图像的类别标签进行反向预测。该方法是在纹理演变的合成图像上开发的,并使用8种不同等级的撕裂卷曲红茶的真实图像进行了测试。为了进行比较,还计算了基于灰度共生(GLCM)的特征,并将两种特征类型用于包括回归方法在内的一系列分类器中。实验结果表明,颗粒矩比基于glcm的特征在茶叶图像分类中的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Ordered Texture Images Using Regression Modelling and Granulometric Features
Structural information available from the granulometry of an image has been used widely in image texture analysis and classification. In this paper we present a method for classifying texture images which follow an intrinsic ordering of textures, using polynomial regression to express granulometric moments as a function of class label. Separate models are built for each individual moment and combined for back-prediction of the class label of a new image. The methodology was developed on synthetic images of evolving textures and tested using real images of 8 different grades of cut-tear-curl black tea leaves. For comparison, grey level co-occurrence (GLCM) based features were also computed, and both feature types were used in a range of classifiers including the regression approach. Experimental results demonstrate the superiority of the granulometric moments over GLCM-based features for classifying these tea images.
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