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On the influence of the image normalization scheme on texture classification accuracy

机译:图像归一化方案对纹理分类精度的影响

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Texture can be a very rich source of information about the image. Texture analysis finds applications, among other things, in biomedical imaging. One of the widely used methods of texture analysis is the Gray Level Co-occurrence Matrix (GLCM). Texture analysis using the GLCM method is most often carried out in several stages: determination of areas of interest, normalization, calculation of the GLCM, extraction of features, and finally, the classification. Values of the GLCM based features depend on the choice of the normalization method, which was examined in this work. The normalization is necessary, since acquired images often suffer from noise and intensity artifacts. Certainly, the normalization will not eliminate these two effects, however it was demonstrated, that its application improves texture analysis accuracy. The aim of the work was to analyze the influence of different normalization methods on the discriminating ability of features estimated from the GLCM. The analysis was performed both for Brodatz textures and real magnetic resonance data. Brodatz textures were corrupted by three types of distortion: intensity nonuniformity, Gaussian noise and Rician Noise. Three types of normalizations were tested: min- max, 1-99% and +/-3σ.
机译:纹理可以是有关图像的非常丰富的信息来源。质地分析发现了生物医学成像等方面的应用。纹理分析的一种广泛使用的方法是灰度共生矩阵(GLCM)。使用GLCM方法进行纹理分析通常是在几个阶段进行的:确定感兴趣区域,归一化,GLCM的计算,特征提取以及最后的分类。基于GLCM的特征的值取决于规范化方法的选择,在本文中对此进行了检验。归一化是必要的,因为获取的图像通常会遭受噪声和强度伪影的影响。当然,归一化并不能消除这两个影响,但是事实证明,归一化的应用可以提高纹理分析的准确性。该工作的目的是分析不同归一化方法对从GLCM估计的特征的辨别能力的影响。对Brodatz纹理和实际磁共振数据都进行了分析。 Brodatz纹理受到三种类型的变形的破坏:强度不均匀,高斯噪声和里氏噪声。测试了三种类型的归一化:最小-最大,1-99%和+/-3σ。

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