An Improved Wiener Filter Based on Adaptive SNR MRI Image Denoising Algorithm

Qingbiao Zhang, Chang Liu, Gang He
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Abstract

Aiming at the disadvantages of traditional Wiener filtering, a new adaptive noise ratio wiener filtering method is proposed in this paper. The method can identify the noise type according to its histogram distribution type, calculate the mean and variance of noise, and construct the corresponding point spread function.At the same time, the image denoising algorithm based on the improved Wiener filter is realized by estimating the adaptive SNR of the image. Especially for the medical images with different background and foreground, the denoising algorithm proposed in this paper has remarkable effect. The experimental results show that the adaptive SNR wiener filter can achieve better results than the traditional wiener filter by combining the main visual effect and objective PSNR value (the larger the PSNR is the better). The algorithm in this paper can directly find the optimal signal-to-noise ratio of wiener filters, which solves the problem that traditional Wiener filters need to estimate the signal-to-noise ratio continuously.
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基于自适应信噪比的改进维纳滤波MRI图像去噪算法
针对传统维纳滤波的缺点,提出了一种新的自适应噪声比维纳滤波方法。该方法可以根据噪声的直方图分布类型识别噪声的类型,计算噪声的均值和方差,并构造相应的点扩散函数。同时,通过估计图像的自适应信噪比,实现了基于改进维纳滤波器的图像去噪算法。特别是对于具有不同背景和前景的医学图像,本文提出的去噪算法效果显著。实验结果表明,结合主视觉效果和客观PSNR值(PSNR越大越好),自适应信噪比维纳滤波器比传统维纳滤波器取得了更好的效果。本文算法可以直接找到维纳滤波器的最优信噪比,解决了传统维纳滤波器需要连续估计信噪比的问题。
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