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首页> 外文期刊>International Journal of Computational Intelligence and Applications >Bi-ComForWaRD: BIVARIATE COMPLEX FOURIER-WAVELET REGULARIZED DECONVOLUTION FOR MEDICAL IMAGING
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Bi-ComForWaRD: BIVARIATE COMPLEX FOURIER-WAVELET REGULARIZED DECONVOLUTION FOR MEDICAL IMAGING

机译:Bi-ComForWaRD:用于医学成像的二元复数傅里叶小波反卷积

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摘要

In this paper, we propose a new hybrid Bivariate Complex Fourier Wavelet Regularized Deconvolution (Bi-ComForWaRD) that is an extension to the ComForWaRD algorithm, for medical imaging. This new algorithm is a two-step process, a global blur compensation using generalized Wiener filter and followed by a denoising algorithm using local adaptive Bivariate shrinkage function. It is a low-complexity denoising algorithm using the joint statistics of the wavelet coefficients and considers the statistical dependencies between the coefficients. And also, the performance of this system will be demonstrated on both the orthogonal wavelet transform and the dual-tree complex wavelet transform (DT-CWT) and some comparisons with the best available wavelet-based image denoising results will be given in order to illustrate the effectiveness of the system.
机译:在本文中,我们提出了一种新的混合双变量复傅立叶小波正则反卷积(Bi-ComForWaRD),它是ComForWaRD算法的扩展,用于医学成像。这个新算法是一个两步过程,一个是使用广义维纳滤波器的全局模糊补偿,另一个是使用局部自适应双变量收缩函数的去噪算法。它是一种利用小波系数联合统计的低复杂度降噪算法,并考虑了系数之间的统计相关性。并且,该系统的性能将在正交小波变换和双树复小波变换(DT-CWT)上得到证明,并将与基于最佳小波的图像去噪结果进行一些比较,以说明系统的有效性。

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