Ultrasound speckle suppression using heavy-tailed distributions in the dual-tree complex wavelet domain

M. Forouzanfar, H. Moghaddam
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引用次数: 8

Abstract

A complex wavelet-based Bayesian method is proposed for denoising of medical ultrasound images. The symmetric alpha-stable distribution (SaS) is used to model the real and imaginary parts of the complex wavelet coefficients of logarithmically transformed noise-free images. The coefficients that correspond to the noise are assumed to approximate a Gaussian distribution. These models are then exploited to develop a Bayesian maximum a posteriori (MAP) estimator, which is well defined for all SaS random variables. To estimate the wavelet coefficients statistics precisely and adaptively, we classify the wavelet coefficients into different clusters using context modeling, which exploits the intrascale dependency of wavelet coefficients. The simulations demonstrate an improved denoising performance over some related earlier techniques.
基于双树复小波域重尾分布的超声散斑抑制
提出了一种基于复杂小波的医学超声图像去噪贝叶斯方法。采用对称稳定分布(sa)对对数变换后的无噪声图像的复小波系数的实部和虚部进行建模。假设与噪声对应的系数近似于高斯分布。然后利用这些模型来开发贝叶斯最大后验(MAP)估计器,该估计器对所有sa随机变量都有很好的定义。为了准确、自适应地估计小波系数统计量,利用小波系数的尺度内依赖性,利用上下文建模将小波系数划分到不同的聚类中。仿真结果表明,该方法的去噪性能比一些相关的早期技术有所提高。
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