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Fuzzy logic based computational model for speckle noise removal in ultrasound images

机译:基于模糊逻辑的超声图像斑点噪声消除计算模型

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摘要

High level of uncertainty is always present due to impulsive noise in ultrasonic images, which may put negative effect on image interpretation, quantitative measurement and diagnostic purposes. In order to deal with this uncertainty, fuzzy modelling is being used which is very helpful in distinguishing noise from edges and other critical details present in the image. In this study, a novel fuzzy logic based non-local mean filter is proposed to model the speckle noise and to restore the degraded image using Fuzzy Uncertainty Modelling (FUM), smoothed by local statistic based information while preserving the image details for low and highly speckled ultrasound images. Proposed denoising technique acquires the local parameters to find distinct similar and non-similar non-local regions using FUM. These homogenous regions are first smoothed through local statistical information and then used to restore the selected noisy pixels using fuzzy logic based noise removal process. The study evaluates the performance of the proposed technique on different real and simulated data sets, and compares the numerical values with existing state of art filters using standard well known global quantitative measure like signal to noise ratio (SNR) and a local error measure - structural similarity index measure (SSIM). Visual and quantitative results demonstrate that the proposed technique outperforms the existing state of the art filters in removing speckle noise while preserving the edges and other important details present in the image.
机译:由于超声图像中的脉冲噪声,始终存在高度不确定性,这可能会对图像解释,定量测量和诊断目的产生负面影响。为了处理这种不确定性,正在使用模糊建模,这对于区分噪声与边缘和图像中存在的其他关键细节非常有帮助。在这项研究中,提出了一种新颖的基于模糊逻辑的非局部均值滤波器,用于对斑点噪声进行建模并使用模糊不确定性建模(FUM)还原退化图像,并通过基于局部统计量的信息进行平滑处理,同时保留图像的高低细节。斑点的超声图像。提议的降噪技术使用FUM获取局部参数以查找不同的相似和非相似的非局部区域。首先通过本地统计信息对这些均匀区域进行平滑处理,然后使用基于模糊逻辑的噪声去除过程将其用于恢复选定的噪点像素。这项研究评估了所提出技术在不同的真实和模拟数据集上的性能,并使用标准的众所周知的全局量化度量(如信噪比(SNR)和局部误差度量-结构)将数值与现有的现有滤波器进行了比较。相似度指标(SSIM)。视觉和定量结果表明,在保留斑点和图像中存在的其他重要细节的同时,所提出的技术在去除斑点噪声方面优于现有的现有技术。

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