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首页> 外文期刊>Journal of Structural Biology >Image segmentation for automatic particle identification in electron micrographs based on hidden Markov random field models and expectation maximization
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Image segmentation for automatic particle identification in electron micrographs based on hidden Markov random field models and expectation maximization

机译:基于隐马尔可夫随机场模型和期望最大化的电子显微图像中颗粒自动识别的图像分割

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摘要

Three-dimensional reconstruction of large macromolecules like viruses at resolutions below 10 Angstrom requires a large set of projection images. Several automatic and semi-automatic particle detection algorithms have been developed along the years. Here we present a general technique designed to automatically identify the projection images of particles. The method is based on Markov random field modelling of the projected images and involves a pre-processing of electron micrographs followed by image segmentation and post-processing. The image is modelled as a coupling of two fields-a Markovian and a non-Markovian. The Markovian field represents the segmented image. The micrograph is the non-Markovian field. The image segmentation step involves an estimation of coupling parameters and the maximum A posteriori estimate of the realization of the Markovian field i.e, segmented image. Unlike most current methods, no bootstrapping with an initial selection of particles is required
机译:分辨率低于10埃的大型大分子(如病毒)的三维重建需要大量投影图像。这些年来,已经开发了几种自动和半自动的粒子检测算法。在这里,我们介绍了一种旨在自动识别粒子投影图像的通用技术。该方法基于投影图像的马尔可夫随机场建模,涉及电子显微照片的预处理,然后进行图像分割和后处理。该图像被建模为两个场的耦合-马氏和非马氏。马尔可夫场表示分割的图像。显微照片是非马尔可夫场。图像分割步骤包括耦合参数的估计和马尔可夫场的实现的最大后验估计,即,分割图像。与大多数当前方法不同,无需使用初始选择的粒子进行引导

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