Spatially adaptive thresholding in wavelet domain for despeckling of ultrasound images

M. Bhuiyan, M. Swamy, M. Ahmad
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引用次数: 80

Abstract

Ultrasound imaging is widely used for diagnostic purposes among the clinicians. A major problem concerning the ultrasound images is their inherent corruption by the multiplicative speckle noise that hampers the quality of the diagnosis, and reduces the efficiency of the algorithms for automatic image processing. In this paper, we propose a new spatially adaptive wavelet-based method in order to reduce the speckle noise from ultrasound images. A spatially adaptive threshold is introduced for denoising the coefficients of log-transformed ultrasound images. The threshold is obtained from a Bayesian maximum a posteriori estimator that is developed using a symmetric normal inverse Gaussian probability density function (PDF) as a prior for modelling the coefficients of the log-transformed reflectivity. A simple and fast method is provided to estimate the parameters of the prior PDF from the neighbouring coefficients. Extensive simulations are carried out using synthetically speckled and ultrasound images. It is shown that the proposed method outperforms several existing techniques in terms of the signal-to-noise ratio, edge preservation index and structural similarity index and visual quality, and in addition, is able to maintain the diagnostically significant details of ultrasound images.
超声图像去斑的小波域空间自适应阈值分割
超声成像在临床医生中被广泛用于诊断目的。超声图像的一个主要问题是其固有的乘性散斑噪声破坏了诊断质量,降低了自动图像处理算法的效率。本文提出了一种新的基于空间自适应小波的方法来降低超声图像中的斑点噪声。引入一种空间自适应阈值对对数变换后的超声图像系数进行去噪。阈值由贝叶斯最大值后验估计获得,该后验估计使用对称正态反高斯概率密度函数(PDF)作为对对数变换反射率系数建模的先验估计。给出了一种简单、快速的方法,可以从相邻系数中估计出先验PDF的参数。利用合成斑点图像和超声图像进行了广泛的模拟。结果表明,该方法在信噪比、边缘保持指数、结构相似度指数和视觉质量等方面均优于现有的几种方法,并且能够保持超声图像诊断的重要细节。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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