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Despeckling of Medical Ultrasound Images

机译:医学超声图像去斑

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摘要

Speckle noise is an inherent property of medical ultrasound imaging, and it generally tends to reduce the image resolution and contrast, thereby reducing the diagnostic value of this imaging modality. As a result, speckle noise reduction is an important prerequisite, whenever ultrasound imaging is used for tissue characterization. Among the many methods that have been proposed to perform this task, there exists a class of approaches that use a multiplicative model of speckled image formation and take advantage of the logarithmical transformation in order to convert multiplicative speckle noise into additive noise. The common assumption made in a dominant number of such studies is that the samples of the additive noise are mutually uncorrelated and obey a Gaussian distribution. The present study shows conceptually and experimentally that this assumption is oversimplified and unnatural. Moreover, it may lead to inadequate performance of the speckle reduction methods. The study introduces a simple preprocessing procedure, which modifies the acquired radio-frequency images (without affecting the anatomical information they contain), so that the noise in the log-transformation domain becomes very close in its behavior to a white Gaussian noise. As a result, the preprocessing allows filtering methods based on assuming the noise to be white and Gaussian, to perform in nearly optimal conditions. The study evaluates performances of three different, nonlinear filters—wavelet denoising, total variation filtering, and anisotropic diffusion—and demonstrates that, in all these cases, the proposed preprocessing significantly improves the quality of resultant images. Our numerical tests include a series of computer-simulated and in vivo experiments.
机译:斑点噪声是医学超声成像的固有属性,并且通常趋于降低图像分辨率和对比度,从而降低该成像方式的诊断价值。结果,每当超声成像用于组织表征时,降低斑点噪声是重要的前提。在已提出的执行此任务的许多方法中,有一类方法使用斑点图像形成的乘法模型并利用对数变换来将乘法斑点噪声转换为加性噪声。在此类研究中占多数的普遍假设是加性噪声的样本互不相关,并且服从高斯分布。本研究从概念上和实验上表明,这种假设过于简单和不自然。而且,这可能导致斑点减少方法的性能不足。该研究引入了一种简单的预处理程序,该程序可以修改获取的射频图像(不影响它们包含的解剖信息),以使对数变换域中的噪声在行为上与白高斯噪声非常接近。结果,该预处理允许基于假设噪声为白噪声和高斯噪声的滤波方法在几乎最佳条件下执行。这项研究评估了三种不同的非线性滤波器的性能-小波降噪,总变化滤波和各向异性扩散-并证明,在所有这些情况下,所提出的预处理都可以显着提高所得图像的质量。我们的数值测试包括一系列计算机模拟和体内实验。

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