基于阈值法的小波域图像去噪与维纳滤波

Barwar Mela Ferzo, F. Mustafa
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引用次数: 5

摘要

图像在采集、压缩、传输、存储和检索过程中经常受到噪声的破坏。这些影响导致了图像信息的失真和丢失。图像去噪是为了在尽可能多地保留图像的重要信号特征的同时,消除噪声。小波去噪的目的是去除信号中的噪声,同时保持信号的特征,而不考虑其频率含量。本文提出了一种对加性高斯白噪声(AWGN)影响的图像进行去噪的新方法。该系统采用小波变换前后的维纳滤波实现。采用离散小波变换(2D-DWT)去除小波域像素噪声。阈值技术和维纳滤波被用于去噪。然后应用2DIDWT逆离散小波变换去噪,完成去噪技术。同时,利用维纳滤波的内涵和小波域三层多分辨率去噪方法对图像进行去噪。采用峰值信噪比(PSNR)测量了所提方法的性能。实验结果表明,与已有研究结果相比,所提方法的降噪效果提高了17.5%左右,在降噪效果和边缘保持方面都优于单独使用小波变换或维纳滤波。
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Image Denoising in Wavelet Domain Based on Thresholding with Applying Wiener Filter
An image is often corrupted with noise throughout procurement, compression, transmission, storage and retrieval processes. These effects are leading to distortion and loss of image information. Image denoising used to eliminate the noise in order to reserve all the fine details in the image while retaining as much as possible the vital signal features. Wavelet denoising aims to remove the noise in the signal while maintaining the features of the signal, regardless of its frequency content. In this work, a new approach is introduced to denoising image that has been affected by Additive White Gaussian Noise (AWGN). The proposed system realized using Wiener filter before and after the wavelet transform. To remove noise from pixels in the wavelet domain, discrete wavelet transform (2D-DWT) is applied. Threshold techniques and Wiener filter have been used for denoising. Then, the 2DIDWT inverse discrete wavelet transform applied to remove noise and complete the denoising technique. Also, in this work, the image is denoised using the connotation of Wiener filtering and denoising method in the wavelet domain with multiresolution at three levels. The performance of the proposed methods has been measured by using the Peak Signal to Noise Ratio (PSNR). Experimental evaluation shows that the results of the proposed methods give an improvement with about 17.5% through the comparison with the results of the related works and the essence of images is improved in terms of noise-reducing better than using a wavelet transform or Wiener filter solo as well as edge preservation.
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