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Non-Parametric Mixture Model Based Evolution of Level Sets and Application to Medical Images

机译:基于非参数混合模型的水平集演化及其在医学图像中的应用

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摘要

We present a novel region-based curve evolution algorithm which has three primary contributions: (i) non-parametric estimation of probability distributions using the recently developed NP windows method; (ii) an inequality-constrained least squares method to model the image histogram with a mixture of nonparametric probability distributions; and (iii) accommodation of the partial volume effect, which is primarily due to low resolution images, and which often poses a significant challenge in medical image analysis (our primary application area). We first approximate the image intensity histogram as a mixture of non-parametric probability density functions (PDFs), justifying its use with respect to medical image analysis. The individual densities in the mixture are estimated using the recent NP windows PDF estimation method, which builds a continuous representation of discrete signals. A Bayesian framework is then formulated in which likelihood probabilities are given by the non-parametric PDFs and prior probabilities are calculated using an inequality constrained least squares method. The non-parametric PDFs are then learnt and the segmentation solution is spatially regularised using a level sets framework. The log ratio of the posterior probabilities is used to drive the level set evolution. As background to our approach, we recall related developments in level set methods. Results are presented for a set of synthetic and natural images as well as simulated and real medical images of various anatomical organs. Results on a range of images show the effectiveness of the proposed algorithm.
机译:我们提出了一种新颖的基于区域的曲线演化算法,该算法具有三个主要贡献:(i)使用最近开发的NP窗口法对概率分布进行非参数估计; (ii)用不等式约束的最小二乘方法对混合了非参数概率分布的图像直方图进行建模; (iii)部分体积效应的调节,这主要是由于分辨率较低的图像,并且在医学图像分析(我们的主要应用领域)中常常构成重大挑战。我们首先将图像强度直方图近似为非参数概率密度函数(PDF)的混合,以证明其在医学图像分析中的使用是正确的。使用最近的NP窗口PDF估算方法估算混合物中的各个密度,该方法可建立离散信号的连续表示。然后制定贝叶斯框架,其中通过非参数PDF给出似然概率,并使用不等式约束最小二乘法计算先验概率。然后学习非参数PDF,并使用级别集框架对分割解决方案进行空间正则化。后验概率的对数比用于驱动水平集演化。作为我们方法的背景,我们回顾了水平集方法的相关发展。给出了一组合成和自然图像以及各种解剖器官的模拟和真实医学图像的结果。一系列图像上的结果表明了该算法的有效性。

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