首页> 外文会议>Mexican International Conference on Artificial Intelligence(MICAI 2005); 20051114-18; Monterrey(MX) >Prostate Segmentation Using Pixel Classification and Genetic Algorithms
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Prostate Segmentation Using Pixel Classification and Genetic Algorithms

机译:使用像素分类和遗传算法进行前列腺分割

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摘要

A Point Distribution Model (PDM) of the prostate has been constructed and used to automatically outline the contour of the gland in transure-thral ultrasound images. We developed a new, two stages, method: first the PDM is fitted, using a multi-population genetic algorithm, to a binary image produced from Bayesian pixel classification. This contour is then used during the second stage to seed the initial population of a simple genetic algorithm, which adjusts the PDM to the prostate boundary on a grey level image. The method is able to find good approximations of the prostate boundary in a robust manner. The method and its results on 4 prostate images are reported.
机译:前列腺的点分布模型(PDM)已构建并用于自动确定经尿道超声图像中腺体的轮廓。我们开发了一种新的,分为两个阶段的方法:首先,使用多种群遗传算法将PDM拟合到由贝叶斯像素分类产生的二进制图像中。然后在第二阶段使用该轮廓为简单遗传算法的初始种群播种,该遗传算法将PDM调整为灰度图像上的前列腺边界。该方法能够以鲁棒的方式找到前列腺边界的良好近似值。报告了该方法及其在4个前列腺图像上的结果。

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