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Texture Classification Using Fractal Dimension Improved by Local Binary Patterns

机译:利用局部二值模式改进的分形维纹理分类

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This paper presents a texture analysis method that combines Bouligand-Minkowski fractal dimension and local binary patterns (LBP) method. The LBP approach is used to obtain “pattern images” from an original input image in order to provide new information sources to be exploited by the Bouligand-Minkowski fractal dimension. Two hybrid approaches were proposed and their results are: “FD(Original image + LBP maps)” (97.12% and 63.80%) and “FD(Original image + LBP maps + STD)” (98.20% and 70.80%) for Brodatz and UIUC image databases, respectively. These results demonstrate that the proposed hybrid method provides a high discriminative feature vector for texture classification.
机译:本文提出了一种结合Bouligand-Minkowski分形维数和局部二值模式(LBP)方法的纹理分析方法。 LBP方法用于从原始输入图像中获取“图案图像”,以提供新的信息源,以供Bouligand-Minkowski分形维利用。提出了两种混合方法,其结果分别是:对于Brodatz和FD,“ FD(原始图像+ LBP图)”(97.12%和63.80%)和“ FD(原始图像+ LBP图+ STD)”(98.20%和70.80%)。 UIUC图像数据库分别。这些结果表明,提出的混合方法为纹理分类提供了高判别特征向量。

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