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ORIGINAL ARTICLE Multivariate morphological reconstruction based fuzzy clustering with a weighting multi-channel guided image filter for color image segmentation

机译:基于原始文章多变量形态重建的基于模糊聚类与彩色图像分割加权多通道引导图像滤波器

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摘要

The fuzzy c-means clustering with guided image filter (GF) is a useful method for image segmentation. The single-channel GF can be efficiently applied to the gray-scale guidance image, but for the color guidance image, due to the high run-time overhead on the calculation of the inverse of the covariance matrix, it is a hard work to perform the multi-channel GF. To address this issue, we propose a novel weighting multi-channel guided image filter (WMGF) method. In this method, each channel of the color guidance image is utilized to guide the filtering for the input image independently and a novel weight is defined for each channel according to the variance of the image pixels in a local window, which greatly eliminates the mutual influence between different channels and brings about a low run-time overhead. In addition, based on the WMGF method, we present a new fuzzy c-means clustering algorithm (FCMWMGF) for the color image segmentation, in which the WMGF is performed on the membership matrix in each iteration of the fuzzy c-means clustering. To further enhance the different noise-immunity and edge preservation, the multivariate morphological reconstruction (MMR) method is introduced into the proposed fuzzy clustering method (MMR_ FCMWMGF) to obtain higher segmentation precision. Experiments on color images with Salt & Pepper and Gaussian noises demonstrate the superiority of the proposed methods.
机译:具有引导图像滤波器(GF)的模糊C-均值聚类是图像分割的有用方法。单通道GF可以有效地应用于灰度指导图像,但是对于颜色引导图像,由于协方差矩阵的逆的计算上的高运行时间开销,它是执行的艰难工作多通道GF。为了解决这个问题,我们提出了一种新型加权多通道引导图像滤波器(WMGF)方法。在该方法中,利用各种信道独立地引导输入图像的滤波,并且根据本地窗口中的图像像素的方差,为每个信道定义新重量,这大大消除了相互影响在不同的频道之间并带来低运行时间开销。另外,基于WMGF方法,我们为彩色图像分割呈现了一种新的模糊C-Means聚类算法(FCMWMGF),其中在模糊C均值聚类的每次迭代中对隶属矩阵执行WMGF。为了进一步增强不同的抗噪声和边缘保存,将多变量形态重建(MMR)方法引入所提出的模糊聚类方法(MMR_FCMWMGF),以获得更高的分割精度。用盐和辣椒和高斯噪声的彩色图像实验证明了所提出的方法的优越性。

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