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Medical image segmentation using characteristic function of Gaussian Mixture Models

机译:利用高斯混合模型特征函数的医学图像分割

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Gaussian Mixture Models (GMMs) have interesting properties that make them useful for many different image applications because they have powerful probabilistic statistical theory basis. However, the application of GMMs to medical image segmentation faces some difficulties. First, many typical model selection criterions become invalid when they estimate the number of components of medical images. Second, the convergence function of GMMs suffers slow convergence. In this paper, a novel medical image segmentation method based on characteristic function of GMMs is proposed. First, a new model selection criterion using characteristic function of GMMs is proposed to estimate the number of components in medical image. Second, a new convergence function using characteristic function of GMMs is proposed to estimate the parameters of GMMs. The experimental results of CT image segmentation show that our algorithm achieves better results than those from many derivatives of GMMs and needs less computation time.
机译:高斯混合模型(GMM)具有有趣的特性,因为它们具有强大的概率统计理论基础,因此它们可用于许多不同的图像应用。然而,将GMMs应用于医学图像分割面临一些困难。首先,许多典型的模型选择准则在估计医学图像的分量数量时变得无效。其次,GMM的收敛功能收敛缓慢。提出了一种基于GMM特征函数的医学图像分割方法。首先,提出了一种新的利用GMMs特征函数的模型选择准则,以估计医学图像中的分量数量。其次,提出了一种新的利用GMMs特征函数的收敛函数来估计GMMs的参数。 CT图像分割的实验结果表明,与许多GMM导数相比,我们的算法取得了更好的效果,并且所需的计算时间更少。

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