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A new adaptive noise estimator for PDE-based MR images denoising

机译:基于PDE的MR图像去噪的新型自适应噪声估计器。

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Among different methods of image denoising, PDE (Partial Differential Equation) based denoising attracted much attention in the field of medical image processing. The benefit of PDE-based denoising methods is the ability to remove the noise as well as preserving edge through Anisotropic Diffusion (AD). Although, AD filtering such as Perona-Malik (P-M) model is widely used for MR Image enhancement, but this filtering is nonoptimal for MR Images that have Rician noise. Thus, this filter should be fitted with Rician noise. One of the most useful AD models that are fitted with Rician noise is AADM (automatic parameter selection anisotropic diffusion for MR Images). In this paper, we propose a new adaptive method to estimate standard deviation of noise and correct the bias error. It causes that the performance of AADM model improves. Experimental results show that when we apply our proposed estimator to AADM method, its performance (such as SNR and edge-preserving) to remove Rician noise in MR Images improves, effectively.
机译:在图像去噪的不同方法中,基于PDE(偏微分方程)的去噪在医学图像处理领域引起了广泛关注。基于PDE的降噪方法的优势在于能够通过各向异性扩散(AD)消除噪声并保留边缘。虽然,诸如Perona-Malik(P-M)模型之类的AD过滤已广泛用于MR图像增强,但是对于具有Rician噪声的MR图像,此过滤不是最佳的。因此,此过滤器应装有Rician噪声。装有Rician噪声的最有用的AD模型之一是AADM(MR图像的自动参数选择各向异性扩散)。在本文中,我们提出了一种新的自适应方法来估计噪声的标准偏差并校正偏置误差。这导致AADM模型的性能提高。实验结果表明,将我们提出的估计器应用于AADM方法时,其去除MR图像中Rician噪声的性能(例如SNR和边缘保留)有效提高。

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