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Quantifying a similarity of classes of texture images

机译:量化纹理图像类别的相似性

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摘要

To quantify the concept of similarity between classes of images three measures and algorithms ofcalculation are proposed. The first measure is calculated through the frequency of misclassification of subimages sampled randomly from images. The second one is calculated through the cross membership of the mass center of a class in a feature space. The third measure is defined through the membership of subimages, using the distance between each subimage and the mass center of a class in a feature space. We study these measures, classifying images in the coordinated clusters representation (CCR) feature space with the minimum distance classifier. A database of images of Rosa Porrino granite tiles, previously classified by three human experts, is used in the experiments. The calculated similarity between classes is in excellent accordance with the qualitative evaluation by the human experts.
机译:为了量化图像类别之间相似度的概念,提出了三种测量方法和算法。第一个度量是通过对从图像中随机采样的子图像进行错误分类的频率来计算的。第二个是通过要素空间中类的质心的交叉隶属关系来计算的。第三个度量是通过子图像的隶属关系定义的,使用每个子图像与特征空间中类的质心之间的距离。我们研究这些措施,使用最小距离分类器对协调聚类表示(CCR)特征空间中的图像进行分类。实验中使用了事先由三位人类专家归类的Rosa Porrino花岗岩砖图像的数据库。类别之间计算出的相似度与人类专家的定性评估非常吻合。

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