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Non-parametric mixture model based evolution of level sets

机译:基于水平集的非参数混合物模型

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We present a novel region based level set algorithm. We first model the image histogram with non-parametric mixture of probability density functions (PDFs). The individual densities are estimated using a recently proposed PDF estimation method which relies on a continuous representation of the discrete signals. Prior probabilities are calculated using an inequality constrained least squares method. The log ratio of the posterior probabilities is used to drive the level set evolution. We also take into account the image artifact called the partial volume effect, which is quite important in medical image analysis. Results are presented on natural as well as medical two dimensional images. Visual inspection of our results show the effectiveness of the proposed algorithm.
机译:我们提出了一种基于新的基于区域的级别集算法。我们首先利用概率密度函数(PDF)的非参数混合物来模拟图像直方图。使用最近提出的PDF估计方法估计各个密度,该方法依赖于离散信号的连续表示。使用不等式约束最小二乘法计算现有概率。后验概率的日志比率用于驱动级别集进化。我们还考虑了称为部分体积效果的图像伪影,这在医学图像分析中非常重要。结果显示在自然以及医学二维图像上。目视检查我们的结果显示了所提出的算法的有效性。

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