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此代码为模糊C均值聚类的图象分割算法的MATLAB实现(与kmeans方法有所不同)-This code is the image of the fuzzy C-means clustering segmentation algorithm in MATLAB
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改进fcm分割算法,它是一种无监督分割方法,无需人的干预,分割过程完全是自动完成 它可以很好地处理噪声,部分体积影响和图像模糊。-Improve FCM segmentation algorithm, it is a kind of unsupervised segmentation method, without human intervention, process fully automatic segmentation complete It can be a very good de
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运用帧差序列图像进行背景建模与更新,采用背景差分和LBP纹理分析法进行运动车辆的分割及阴影消除。提出车辆形状投影量的概念,将视频车辆二维形状信息降至一维,并设计二维输入模糊分类器,根据形状投影量和车高,车长比,完成车型的多种类精细识别。-Frame difference image sequence background modeling and updating, background subtraction and the LBP texture analysis method for th
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直方图自适应模糊分割算法,基于图像直方图统计信息的模糊分割算法,算法简单,速度快-Histogram adaptive fuzzy segmentation algorithm, based on image histogram statistics of the fuzzy segmentation algorithm, algorithm is simple, fast
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This program illustrates the Fuzzy c-means segmentation of an image.
This program converts an input image into two segments using Fuzzy k-means
algorithm. The output is stored as fuzzysegmented.jpg in the current directory.
This program ca
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对图像进行处理,实现了直方图显示,边缘提取,模糊聚类分割等-The image processing, a histogram display, edge detection, segmentation fuzzy clustering
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用模糊增强的方法增加原图像的对比度,以便用于后续分类和分割-Fuzzy enhancement method of increasing the contrast of the original image, so that for subsequent classification and segmentation
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自己编写的matlab程序,实现了图像的模糊C均值分割,没有调用工具箱里的fcm函数,里面的图像,代码文件齐全,亲测可用-I have written the matlab program,did not call the toolbox FCM function to achieve the image of the fuzzy C mean segmentation. The code file is complete, can be debugged.
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基于区域的空间域图像融合。先对源图像作小波分解,低频分量加权平均,高频分量用模糊C均值聚类算法进行区域分割,对区域进行基于ssim值的融合,最后小波逆变换得到融合图像。-region based spatial domain method.First do the source image wavelet decomposition low frequency components weighted average of the high frequency component using Fu
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that arises the surface coil array.
This entropy-based method does not require classification and
robustly addresses some problems that are more severe than
those found in brain imaging, including noise, steep bias field,
sensitivity of arter
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