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Integration of Gibbs prior models and deformable models for 3D medical image segmentation

机译:Gibbs的集成以前模型和可变形模型3D医学图像分割

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This paper proposes a new methodology for 3D medical image segmentation based on the integration of SD deformable and Markov Random Field models. Our method makes use of Markov Random Field theory lo build Gibbs Prior models for the SD medical image with arbitrary initial parameters to estimate the organ boundary. Then we use a 3D deformable model to fit the estimated boundary under the influence of gradient information in the initial 3D image and the balloon force. The result of the deformable model fit is used to update the Gibbs prior model parameters, such as the gradient threshold of a boundary. Based on the updated parameters we restart the Gibbs Prior models. By integrating these processes recursively we achieve an automated segmentation of the initial 3D images. Our segmentation solution greatly reduces the lime for 3D segmentation process and is capable of gelling out of local minim. Results of the method are presented for several examples, including some MRI images with significant amount of noise.
机译:本文提出了一种基于SD可变形和马尔可夫随机现场模型的集成的3D医学图像分割方法。我们的方法利用Markov随机字段理论Lo构建Gibbs用于具有任意初始参数的SD医学图像的模型,以估计器官边界。然后,我们使用3D可变形模型来拟合初始3D图像中梯度信息的影响和球囊力的影响。可变形模型拟合的结果用于更新GIBB之前的模型参数,例如边界的梯度阈值。根据更新的参数,我们重新启动GIBB之前的模型。通过递归地集成这些过程,我们实现了初始3D图像的自动分割。我们的分割解决方案大大减少了用于3D分段过程的石灰,并且能够堵塞局部最小值。呈现该方法的结果,包括一些具有大量噪声的MRI图像。

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