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Denoising techniques in adaptive multi-resolution domains with applications to biomedical images

机译:自适应多分辨率域中的去噪技术及其在生物医学图像中的应用

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摘要

Variational mode decomposition (VMD) is a new adaptive multi-resolution technique suitable for signal denoising purpose. The main focus of this work has been to study the feasibility of several image denoising techniques in empirical mode decomposition (EMD) and VMD domains. A comparative study is made using 11 techniques widely used in the literature, including Wiener filter, first-order local statistics, fourth partial differential equation, nonlinear complex diffusion process, linear complex diffusion process (LCDP), probabilistic non-local means, non-local Euclidean medians, non-local means, non-local patch regression, discrete wavelet transform and wavelet packet transform. On the basis of comparison of 396 denoising based on peak signal-to-noise ratio, it is found that the best performances are obtained in VMD domain when appropriate denoising techniques are applied. Particularly, it is found that LCDP in combination with VMD performs the best and that VMD is faster than EMD.
机译:变异模式分解(VMD)是一种新的自适应多分辨率技术,适用于信号降噪目的。这项工作的主要重点是研究几种图像去噪技术在经验模式分解(EMD)和VMD域中的可行性。使用文献中广泛使用的11种技术进行了比较研究,包括Wiener滤波,一阶局部统计,四阶偏微分方程,非线性复数扩散过程,线性复数扩散过程(LCDP),概率非局部均值,非局部欧几里得中位数,非局部均值,非局部补丁回归,离散小波变换和小波包变换。根据基于峰值信噪比的396种降噪比较,发现采用适当的降噪技术可在VMD域中获得最佳性能。特别是,发现LCDP与VMD结合使用效果最佳,并且VMD比EMD更快。

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