基于图像去噪拟合项的乳腺超声图像边界提取变分模型

Nurdina Badrulhisam, Nurhuda Ismail, Abdul Kadir Jumaat, Mohd Azdi Maasar, Mohamed Faris Laham
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引用次数: 0

摘要

采用变分模型对乳腺超声(BUS)图像边界进行提取或分割,寻找异常区域的闭合曲线,为进一步诊断提供依据。最近的一种选择性变分模型,称为凸距离选择性分割(CDSS)模型,可以有效地分割特定的图像对象。然而,CDSS模型难以分割噪声图像。众所周知,总线图像中不可避免的噪声会导致分割效果不佳。本研究的目的是提出一种凸距离选择分割(CDSS)模型的重新表述,用于分割BUS图像。考虑到四种不同的图像去噪算法——高斯滤波、中值滤波、维纳滤波和Rudin-Osher-Fatemi (ROF)算法——作为CDSS模型的新拟合项,改进的CDSS模型有四种变体,分别是基于高斯滤波的改进CDSS (MCDSSG)、基于中值滤波的改进CDSS (MCDSSM)、基于维纳滤波的改进CDSS (MCDSSW)和基于ROF的改进CDSS (MCDSSROF)。为了求解修正后的模型,我们首先推导了相关的欧拉-拉格朗日方程,并在MATLAB软件中求解。实验表明,基于ROF去噪算法的MCDSSROF模型的峰值信噪比(PSNR)、Dice和Jaccard相似系数的平均值最高,表明与其他模型相比,该模型具有最高的去噪质量和分割精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Variational model with image denoising fitting term for boundary extraction of breast ultrasound images
A variational model was used to extract or segment the breast ultrasound (BUS) image boundary in order to find a closed curve line of the abnormality region for further diagnosis. A recent selective variational model, termed the Convex Distance Selective Segmentation (CDSS) model, is effective at segmenting a specific image object. However, the CDSS model has difficulty segmenting noisy images. Unavoidable noise in BUS pictures leads to poor segmentation, as is widely recognized. The objective of this work is to propose a reformulation of the Convex Distance Selective Segmentation (CDSS) model for the purpose of segmenting BUS pictures. Consideration of four distinct image Denoising algorithms—Gaussian filter, Median filter, Wiener filter, and Rudin-Osher-Fatemi (ROF) algorithm—as the new fitting terms in the CDSS model leads to four variants of modified CDSS models called Modified CDSS based on Gaussian filter (MCDSSG), Modified CDSS based on Median filter (MCDSSM), Modified CDSS based on Wiener filter (MCDSSW) and Modified CDSS based on ROF (MCDSSROF). To solve the modified models, we first derived the associate Euler-Lagrange equation and solved it in Matrix Laboratory (MATLAB) software. Experiments demonstrated that the proposed MCDSSROF model based on the ROF denoising algorithm provided the highest average of Peak-Signal-To-Noise-Ratio (PSNR), Dice, and Jaccard Similarity Coefficients, indicating the highest denoising quality and segmentation accuracy in comparison to other models.
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CiteScore
1.90
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