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A new descriptor for textured image segmentation based on fuzzy type-2 clustering approach

机译:基于模糊2型聚类的纹理图像分割新描述符

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In this paper we present a novel segmentation approach that performs fuzzy clustering and feature extraction. The proposed method consists in forming a new descriptor combining a set of texture sub-features derived from the Grating Cell Operator (GCO) responses of an optimized Gabor filter bank, and Local Binary Pattern (LBP) outputs. The new feature vector offers two advantages. First, it only considers the optimized filters. Second, it aims to characterize both micro and macro textures. In addition, an extended version of a type 2 fuzzy c-means clustering algorithm is proposed. The extension is based on the integration of spatial information in the membership function (MF). The performance of this method is demonstrated by several experiments on natural textures.
机译:在本文中,我们提出了一种执行模糊聚类和特征提取的新颖分割方法。所提出的方法包括形成一个新的描述符,该描述符结合了一组纹理子特征,这些子特征是从优化的Gabor滤波器组的光栅单元算子(GCO)响应和本地二进制模式(LBP)输出中得出的。新的特征向量具有两个优点。首先,它仅考虑优化的滤波器。其次,它旨在表征微观和宏观纹理。此外,提出了类型2模糊c均值聚类算法的扩展版本。该扩展基于隶属度函数(MF)中空间信息的集成。这种方法的性能通过自然纹理的几个实验得到证明。

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