基于多小波域的医用x射线图像去噪

Jianming Lu, Ling Wang, Yeqiu Li, T. Yahagi
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引用次数: 15

摘要

当信号嵌入加性高斯噪声时,通常通过寻找将信号能量集中在几个系数中的小波基,然后对噪声系数进行阈值处理来进行估计。然而,在许多实际问题中,如医学x射线图像、天文和低光图像,记录的数据不是用高斯噪声建模,而是作为泊松过程的实现。多小波是小波理论主体的新发展。多小波同时提供正交性、对称性和短支持,这些在标量双通道小波系统中是不可能的。本文在对这一理论进行综述的基础上,提出并研究了一种基于多小波多分辨率分析(MRA)的医学x射线图像去噪新理论和算法。采用协方差收缩(CS)方法对小波系数进行阈值处理。在医学图像去噪的广泛数值模拟中,阈值的形式是得到比传统方法更好的结果的关键
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Noise Removal for Medical X-ray images in Multiwavelet Domain
When a signal is embedded in an additive Gaussian noise, its estimation is often done by finding a wavelet basis that concentrates the signal energy in few coefficients and then thresholding the noisy coefficients. However, in many practical problems such as medical X-ray image, astronomical and low-light images, the recorded data is not modeled by Gaussian noise but as the realization of a Poisson process. Multiwavelet is a new development to the body of wavelet theory. Multiwavelet simultaneously offers orthogonality, symmetry and short support which are not possible in scalar 2-channel wavelet systems. After reviewing this recently developed theory, a new theory and algorithm for denoising medical X-ray images using multiwavelet multiple resolution analysis (MRA) are presented and investigated in this paper. The proposed covariance shrink (CS) method is used to threshold wavelet coefficients. The form of thresholds is carefully formulated which is the key to more excellent results obtained in the extensive numerical simulations of medical image denoising compared to conventional methods
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