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A DCT-based local and non-local fuzzy C-means algorithm for segmentation of brain magnetic resonance images

机译:基于DCT的本地和非局部模糊C型算法,用于分割脑磁共振图像

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摘要

Accurate segmentation of brain tissues from magnetic resonance images (MRI) is a crucial requirement for the quantitative analysis of brain images. Due to the presence of noise in brain MRI, many segmentation methods suffer from low segmentation accuracy. The existing methods deal the noise sensitivity of the MRI segmentation in the spatial domain by combining the local and nonlocal information in the fuzzy C-means (FCM) method. These methods are prone to loosing image details while reducing the effect of noise. In this paper, we propose a transform domain approach using the discrete cosine transform (DCT). Working in the transform domain has an advantage over the spatial domain in which the intensity of the image is decorrelated and the image information is represented by the independent frequency bands. The low and middle level frequency bands represent the holistic and fine structures of the image and the high frequency band mostly carries the noise information. In the proposed method, called the DCT-based local and nonlocal FCM (DCT-LNLFCM), the distance function of the FCM is represented as the sum of the local and nonlocal distances which themselves are the weighted values of the Euclidean distance used in the FCM. Since the weights are computed in the transform domain, a good tradeoff is achieved between noise insensitivity and preservation of the image details. This results in the high accuracy of the MRI segmentation. Detailed experimental results are presented and comparison with the state-of-the-art techniques is performed to demonstrate the high performance of the proposed approach. The proposed method provides an improvement in the average segmentation accuracy from 1.10% to 2.03% on simulated images and 1.52% to 1.91% on real images. (C) 2018 Elsevier B.V. All rights reserved.
机译:来自磁共振图像(MRI)的脑组织的精确分割是对脑图像定量分析的关键要求。由于脑MRI中存在噪声,许多分割方法遭受低分割精度。现有方法通过将模糊C-MATION(FCM)方法中的本地和非本地信息组合来涉及空间域中MRI分割的噪声灵敏度。这些方法容易导致图像细节,同时降低噪声的效果。在本文中,我们提出了使用离散余弦变换(DCT)的转换域方法。在变换域中工作在空间域上具有优点,其中图像的强度被去相关,图像信息由独立频带表示。低电平和中级频带表示图像的整体和精细结构,并且高频带主要携带噪声信息。在所提出的方法中,称为基于DCT的局部和非局部FCM(DCT-LNLFCM),FCM的距离功能表示为本身是所使用的欧几里德距离的加权值的本地和非识别距离的总和FCM。由于在变换域中计算权重,因此在噪声不敏感性和图像细节的保存之间实现了良好的权衡。这导致MRI分段的高精度。提出了详细的实验结果,并进行了现有技术的比较,以证明所提出的方法的高性能。该方法的平均分段精度从模拟图像的平均分割精度的提高提供了1.52%,对实际图像的1.52%至1.91%。 (c)2018 Elsevier B.v.保留所有权利。

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