A Novel Method of Medical Image Denoising Using Bilateral and NLm Filtering

M. Mohan, V. Sheeba
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引用次数: 8

Abstract

One of the bottleneck in medical imaging is due to low Signal-to-Noise Ratio(SNR) which requires long and repeated acquisition of the same subject to reduce noise and blur. To obtain a high SNR image without lengthy repeated scans, post processing of data such as denoising plays a critical role. Bilateral and Nonlocal means (NLm) filtering are commonly used procedures for medical image denoising. In this paper we propose a new thresholding scheme to wavelet and contour let based denoising by introducing a scaling factor to universal threshold. Also we propose the aforementioned novel contour let thresholding scheme as a preprocessing step on bilateral filtering and NLm denoising. Simulation results show that the proposed single entity comprising the novel preprocessing step and bilateral or NLm denoising is superior in terms of PSNR and perceptual quality compared to Bilateral filtering or NLm denoising used alone.
一种基于双侧滤波和NLm滤波的医学图像去噪方法
低信噪比(SNR)是医学成像的瓶颈之一,它需要长时间和重复地采集同一对象以减少噪声和模糊。为了获得高信噪比的图像而不需要长时间的重复扫描,数据的后处理(如去噪)起着至关重要的作用。双边滤波和非局部均值滤波是医学图像去噪的常用方法。本文通过在通用阈值中引入比例因子,提出了一种新的基于小波和轮廓let的去噪阈值方案。此外,我们还提出了上述新的轮廓let阈值分割方案作为双边滤波和NLm去噪的预处理步骤。仿真结果表明,与单独使用双边滤波或NLm去噪相比,所提出的包含新预处理步骤和双边或NLm去噪的单一实体在PSNR和感知质量方面都优于单独使用双边滤波或NLm去噪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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