Recasted nonlinear complex diffusion method for removal of Rician noise from breast MRI images

Pradeep Kumar, Subodh Srivastava, Y. Padma Sai
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Abstract

The evolution of magnetic resonance imaging (MRI) leads to the study of the internal anatomy of the breast. It maps the physical features along with functional characteristics of selected regions. However, its mapping accuracy is affected by the presence of Rician noise. This noise limits the qualitative and quantitative measures of breast image. This paper proposes recasted nonlinear complex diffusion filter for sharpening the details and removal of Rician noise. It follows maximum likelihood estimation along with optimal parameter selection of complex diffusion where the overall functionality is balanced by regularization parameters. To make recasted nonlinear complex diffusion, the edge threshold constraint “k” of diffusion coefficient is reformed. It is replaced by the standard deviation of the image. It offers a wide range of threshold as variability present in the image with respect to edge. It also provides an automatic selection of “k” instead of user-based value. A series of evaluation has been conducted with respect to different noise ratios further quality improvement of MRI. The qualitative and quantitative assessments of evaluations are tested for the Reference Image Database to Evaluate Therapy Response (RIDER) Breast database. The proposed method is also compared with other existing methods. The quantitative assessment includes the parameters of the full-reference image, human visual system, and no-reference image. It is observed that the proposed method is capable of preserving edges, sharpening the details, and removal of Rician noise.
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重构非线性复扩散法去除乳腺MRI图像中的噪声
磁共振成像(MRI)的发展导致了对乳房内部解剖结构的研究。它绘制了选定区域的物理特征和功能特征。然而,它的映射精度受到噪声的影响。这种噪声限制了乳房图像的定性和定量测量。本文提出了一种重形非线性复杂扩散滤波器,用于细节的锐化和噪声的去除。它遵循最大似然估计和复杂扩散的最优参数选择,其中总体功能由正则化参数平衡。为了实现非线性复扩散,对扩散系数的边缘阈值约束“k”进行了改进。它被图像的标准偏差取代。它提供了一个广泛的阈值作为可变性存在于相对于边缘的图像。它还提供了“k”的自动选择,而不是基于用户的值。对不同的噪声比进行了一系列的评价,进一步提高了MRI的质量。评估的定性和定量评估被用于评估治疗反应的参考图像数据库(RIDER)乳房数据库。并与现有方法进行了比较。定量评价包括全参考图像、人眼视觉系统和无参考图像的参数。实验结果表明,该方法能够有效地保留图像边缘,锐化图像细节,去除图像噪声。
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来源期刊
CiteScore
2.80
自引率
12.50%
发文量
40
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