An innovative approach for spatial video noise reduction using a wavelet based frequency decomposition

A. D. Stefano, P. White, W. Collis
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引用次数: 16

Abstract

Many real word images are contaminated by noise. The noise not only degrades image quality but may also hinder further processing operations. Noise reduction techniques aim to both improve image quality and to aid further image processing. Spatial noise reduction techniques based on the discrete wavelet transform have been widely researched. This paper considers an undecimated shift invariant filter bank that has been used to decompose the image into components. The basic filters are derived from a biorthogonal wavelet basis. Reconstruction is obtained by a simple summation of the image components. A new thresholding scheme, which is obtained from Bayesian estimator theory, is used. The threshold parameters for each component are dependent on the noise level and are selected using a preliminary training procedure. The cost function utilised for the training is a weighted version of the mean square error which is designed to reflect human perception. The method compares favourably with other wavelet based noise reduction techniques and demonstrates significant noise reduction and visual quality enhancement.
一种基于小波的频率分解的空间视频降噪方法
许多真实世界的图像都受到噪声的污染。噪声不仅会降低图像质量,还可能妨碍进一步的处理操作。降噪技术的目的是提高图像质量和帮助进一步的图像处理。基于离散小波变换的空间降噪技术得到了广泛的研究。本文考虑了一种用于将图像分解成分量的未消差移不变滤波器组。基本滤波器是由双正交小波基导出的。重建是由一个简单的求和图像的成分。利用贝叶斯估计理论提出了一种新的阈值格式。每个分量的阈值参数依赖于噪声水平,并使用初步训练程序进行选择。用于训练的成本函数是均方误差的加权版本,旨在反映人类的感知。与其他基于小波的降噪技术相比,该方法具有较好的降噪效果和视觉质量增强效果。
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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