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利用混合模型的方法對正子電腦斷層掃描影像做影像分割並與K-means及常態混合模型的方法比較

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Figure 2.3.1: It is the histogram for small pixels of a mouse brain in MicroPET image
Figure 2.4.1: The mixture distribution is composed of two normal mixture distributions, the  mean is   1   and the standard deviation is   1   in one of normal mixture distributions, mean  is  2  and the standard deviation is   2  in another
Figure 2.4.2: The mixture distribution is composed of  Gamma ( , )    and  Normal ( , )  
Figure 2.6.1: The procedure for segmentation of data by K-means with KDE, GMM with  KDE and FMM with KDE
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