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An enhanced adaptive non-local means algorithm for Rician noise reduction in magnetic resonance brain images

机译:磁共振大脑图像中的瑞典噪声降低的增强的自适应非本地方法算法

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The Rician noise formed in magnetic resonance (MR) imaging greatly reduced the accuracy and reliability of subsequent analysis, and most of the existing denoising methods are suitable for Gaussian noise rather than Rician noise. Aiming to solve this problem, we proposed fuzzy c-means and adaptive non-local means (FANLM), which combined the adaptive non-local means (NLM) with fuzzy c-means (FCM), as a novel method to reduce noise in the study. The algorithm chose the optimal size of search window automatically based on the noise variance which was estimated by the improved estimator of the median absolute deviation (MAD) for Rician noise. Meanwhile, it solved the problem that the traditional NLM algorithm had to use a fixed size of search window. Considering the distribution characteristics for each pixel, we designed three types of search window sizes as large, medium and small instead of using a fixed size. In addition, the combination with the FCM algorithm helped to achieve better denoising effect since the improved the FCM algorithm divided the membership degrees of images and introduced the morphological reconstruction to preserve the image details. The experimental results showed that the proposed algorithm (FANLM) can effectively remove the noise. Moreover, it had the highest peak signal-noise ratio (PSNR) and structural similarity (SSIM), compared with other three methods: non-local means (NLM), linear minimum mean square error (LMMSE) and undecimated wavelet transform (UWT). Using the FANLM method, the image details can be well preserved with the noise being mostly removed. Compared with the traditional denoising methods, the experimental results showed that the proposed approach effectively suppressed the noise and the edge details were well retained. However, the FANLM method took an average of 13?s throughout the experiment, and its computational cost was not the shortest. Addressing these can be part of our future research.
机译:在磁共振(MR)成像中形成的RICian噪声大大降低了随后的分析的准确性和可靠性,并且大多数现有的去噪方法适用于高斯噪声而不是瑞典噪声。旨在解决这个问题,我们提出了模糊的C型方式和自适应非本地方法(FANLM),其将自适应非本地方法(NLM)与模糊C-MEAR(FCM)组合,作为降低噪声的新方法研究。该算法根据噪声差异,自动选择了搜索窗口的最佳大小,该噪声方差是由瑞典噪声的中位绝对偏差(MAD)的改进估计器估计的噪声方差。同时,它解决了传统的NLM算法使用固定大小的搜索窗口的问题。考虑到每个像素的分布特性,我们设计了三种类型的搜索窗口大小,如大,中,小而不是使用固定尺寸。另外,与FCM算法的组合有助于实现更好的去噪效果,因为改进的FCM算法划分了隶属度图像并引入了形态重建以保护图像细节。实验结果表明,所提出的算法(FANLM)可以有效地消除噪声。此外,它具有最高的峰值信噪比(PSNR)和结构相似度(SSIM),与其他三种方法相比:非本地方法(NLM),线性最小均方误差(LMMSE)和未传定的小波变换(UWT) 。使用FANLM方法,可以很好地保留图像细节,并且噪声大多被移除。与传统的去噪方法相比,实验结果表明,所提出的方法有效地抑制了噪声,边缘细节得到良好的保留。然而,扇形方法在整个实验中平均花费13次,其计算成本不是最短的。解决这些可能是我们未来研究的一部分。

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