On modeling the distribution of chest X-ray images

Y.-Q. Zhang, M. Loew, R. Pickholtz
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引用次数: 0

Abstract

Summary form only given. One of the determining factors in parametric modeling of a stationary image source is its marginal probability distribution. There have been several different assumptions about this distribution, based on either histogram measurement with an ergodicity assumption or the physics of the image-generating process. Gaussian, Rayleigh, exponential, and some other distributions have been reported to model the source. It is shown that the probability density function of the differential image can be very well modeled as a generalized Gaussian distribution. A Peano-type differential operation, which has been shown to be the optimal scanning method and essentially achieves the entropy of the image asymptotically, has been implemented. The Kolmogorov-Smirnov test for goodness of fit has been used for 20 normal chest X-ray images. On the basis of the test results a first-order generalized Gaussian autoregressive model for the image source has been proposed and its properties and applications studied.<>
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胸部x线图像分布的建模
只提供摘要形式。平稳图像源参数化建模的决定因素之一是其边际概率分布。关于这种分布有几种不同的假设,要么基于具有遍历性假设的直方图测量,要么基于图像生成过程的物理特性。高斯分布、瑞利分布、指数分布和其他一些分布已经被报道来模拟源。结果表明,差分图像的概率密度函数可以很好地建模为广义高斯分布。一种已被证明是最优的扫描方法的皮亚诺型微分运算,基本上实现了图像的渐近熵。柯尔莫哥洛夫-斯米尔诺夫拟合优度检验已用于20个正常胸部x线图像。在试验结果的基础上,提出了图像源的一阶广义高斯自回归模型,并对其性质和应用进行了研究
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