基于布尔模型的纹理分类及其在HEp-2细胞中的应用

P. Perner, Horst Perner, Bernd Müller
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引用次数: 9

摘要

我们研究了纹理分类的布尔模型。我们对三个问题感兴趣:1。分类的最佳特性是什么?2. 从原始图像创建的布尔模型的数量如何影响分类器的准确性?3.决策树归纳法是正确的分类方法吗?我们正在研究一个现实世界的应用,那就是HEp-2细胞的分类。这种细胞在医学上用于鉴定抗核自身抗体。人类专家通过象征性的纹理特征来描述这些细胞的特征。我们将布尔模型应用于该问题,并假设初级颗粒是大小和形状随机的区域。我们使用决策树归纳法来学习相关的分类知识和分类器的结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Texture classification based on the Boolean model and its application to HEp-2 cells
We investigated the Boolean model for the classification of textures. We were interested in three issues: 1. What are the best features for classification? 2. How does the number of Boolean models created from the original image influence the accuracy of the classifier? 3. Is decision tree induction the right method for classification? We are working on a real-world application which is the classification of HEp-2 cells. This kind of cells are used in medicine for the identification of antinuclear autoantibodies. Human experts describe the characteristics of these cells by symbolic texture features. We apply the Boolean model to this problem and assume that the primary grains are regions of random size and shape. We use decision tree induction in order to learn the relevant classification knowledge and the structure of the classifier.
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