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An integrated method of adaptive enhancement for unsupervised segmentation of MRI brain images

机译:MRI脑图像无监督分割的自适应增强集成方法

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摘要

This paper presents an integrated method of the adaptive enhancement for an unsupervised global-to-local segmentation of brain tissues in three-dimensional (3-D) MRI (Magnetic Resonance Imaging) images. Three brain tissues are of interest: CSF (CerebroSpinal Fluid), GM (Gray Matter), WM (White Matter). Firstly, we de-noise the images using a newly proposed versatile wavelet-based filter, and segment the images with minimum error global thresholding. Subsequently, we combine a spatial-feature-based FCM (Fuzzy C-Means) clustering with 3-D clustering-result-weighted median and average filters, so as to further achieve a locally adaptive enhancement and segmentation. This integrated strategy yields a robust and accurate segmentation, particularly in noisy images. The performance of the proposed method is validated by four indices on MRI brain phantom images and on real MRI images.
机译:本文提出了一种自适应增强的集成方法,用于在三维(3-D)MRI(磁共振成像)图像中对脑组织进行无监督的全局到局部分割。感兴趣的三个脑组织是:CSF(脑脊髓液),GM(灰色物质),WM(白色物质)。首先,我们使用新提出的通用的基于小波的滤波器对图像进行消噪,并使用最小误差全局阈值对图像进行分割。随后,我们将基于空间特征的FCM(模糊C均值)聚类与3-D聚类结果加权的中值和平均滤波器相结合,以进一步实现局部自适应的增强和分割。这种综合策略可产生鲁棒且准确的分割效果,尤其是在嘈杂的图像中。该方法的性能通过MRI脑部幻影图像和真实MRI图像上的四个指标验证。

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