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Texture classification using color local texture features

机译:使用颜色局部纹理特征进行纹理分类

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摘要

This Paper proposes a new approach to extract the features of a color texture image for the purpose of texture classification. Four feature sets are involved. Dominant Neighbourhood Structure (DNS) is the new feature set that has been used for color texture image classification. In this feature a global map is generated which represents measured intensity similarity between a given image pixel and its surrounding neighbours within a certain window. Addition to the above generated feature set, features obtained from DWT are added together with DNS to obtain an efficient texture classification. Also the proposed feature sets are compared with that of Gabor wavelet, LBP and DWT. The texture classification process is carried out with the robust SVM classifier. The experimental results on the CUReT database shows that the proposed method is an efficient method whose classification rate is higher when compared with the other methods.
机译:本文提出了一种新的方法来提取彩色纹理图像的特征,以进行纹理分类。涉及四个功能集。优势邻域结构(DNS)是已用于颜色纹理图像分类的新功能集。在该特征中,生成了全局图,该全局图表示给定图像像素与其在特定窗口内的周围邻居之间测得的强度相似性。除了上面生成的特征集,将从DWT获得的特征与DNS一起添加以获得有效的纹理分类。还将提出的特征集与Gabor小波,LBP和DWT的特征集进行比较。使用强大的SVM分类器执行纹理分类过程。在CUReT数据库上的实验结果表明,该方法是一种有效的方法,与其他方法相比,其分类率更高。

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