基于小波的四阶PDE图像增强

Ehsan Nadernejad, Søren Forchhammer
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引用次数: 7

摘要

噪声干扰信号的存在会给信号和图像分析带来问题;因此,在许多信号处理应用中,信号和图像的去噪常被用作预处理阶段。提出了一种基于四阶偏微分方程和小波变换的图像去噪方法。在现有的小波阈值法中,最终降噪后的图像改进有限。这是由于保持图像的近似系数不变。这些系数包含了图像的主要信息。由于噪声对近似系数和细节系数都有影响,本研究在近似波段采用各向异性扩散降噪技术,以弥补现有小波阈值法的不足。将该方法应用于若干标准噪声图像,结果表明该方法优于现有的基于小波的图像去噪、各向异性扩散和维纳滤波技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wavelet-based image enhancement using fourth order PDE
The presence of noise interference signal may cause problems in signal and image analysis; hence signal and image de-noising is often used as a preprocessing stage in many signal processing applications. In this paper, a new method is presented for image de-noising based on fourth order partial differential equations (PDEs) and wavelet transform. In the existing wavelet thresholding methods, the final noise reduced image has limited improvement. It is due to keeping the approximate coefficients of the image unchanged. These coefficients have the main information of the image. Since noise affects both the approximate and detail coefficients, in this research, the anisotropic diffusion technique for noise reduction is applied on the approximation band to alleviate the deficiency of the existing wavelet thresholding methods. The proposed method was applied on several standard noisy images and the results indicate superiority of the proposed method over the existing wavelet-based image de-noising, anisotropic diffusion, and wiener filtering techniques.
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