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首页> 外文期刊>Information Sciences: An International Journal >Kernel-induced fuzzy clustering of image pixels with an improved differential evolution algorithm
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Kernel-induced fuzzy clustering of image pixels with an improved differential evolution algorithm

机译:改进的差分进化算法对图像像素进行核诱导的模糊聚类

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摘要

A modified differential evolution (DE) algorithm is presented for clustering the pixels of an image in the gray-scale intensity space. The algorithm requires no prior information about the number of naturally occurring clusters in the image. It uses a kernel induced similarity measure instead of the conventional sum-of-squares distance. Use of the kernel function makes it possible to partition data that is linearly non-separable and non hyper-spherical in the original input space, into homogeneous groups in a transformed high-dimensional feature space. A novel search-variable representation scheme is adopted for selecting the optimal number of clusters from several possible choices. Extensive performance comparison over a test-suite of 10 gray-scale images and objective comparison with manually segmented ground truth indicates that the proposed algorithm has an edge over a few state-of-the-art algorithms for automatic multi-class image segmentation.
机译:提出了一种改进的差分进化(DE)算法,用于对灰度强度空间中的图像像素进行聚类。该算法不需要有关图像中自然出现的簇数的先验信息。它使用核诱导的相似性度量代替常规的平方和距离。使用内核函数可以将原始输入空间中线性不可分离且非超球形的数据划分为变换后的高维特征空间中的同质组。采用新颖的搜索变量表示方案,从几种可能的选择中选择最佳数目的聚类。在10个灰度图像的测试套件上进行的广泛性能比较以及与手动分割的地面真实情况的客观比较表明,所提出的算法在自动多类图像分割的一些最新算法方面具有优势。

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