Noise removal for degraded images by IBS shrink method in multiwavelet domain
Jianming Lu, Ling Wang, Yeqiu Li, T. Yahagi
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引用次数: 3
Abstract
The wavelet transform has been used for image compression, image restoration, signal processing, and pattern recognition. In most cases, processing is performed with a scalar wavelet using one scaling function. However, the scalar wavelet has the deficiency that the properties of shortness of support, regularity, orthogonality, and high vanishing moment are not shared at the same time. Recently, the multiwavelet, consisting of several scaling functions and several wavelet functions, has been proposed. Since several input data are obtained by preprocessing in the multiwavelet transform, many studies of applications of the multiwavelet in the fields of signal processing and image processing are being carried out. Many engineering achievements have been reported. However, little has been reported on the use of multiwavelets for restoration of degraded images. This is a research field with prospects for future growth. In the present research, a threshold shrinking method is proposed in which different threshold values are used for the horizontal, vertical, and diagonal directions at each level and also within the same level in the multiwavelet domain for degraded images with superimposed Gaussian noise. The effectiveness of the proposed method is demonstrated by a computer simulation. © 2007 Wiley Periodicals, Inc. Electron Comm Jpn Pt 3, 90(7): 15– 24, 2007; Published online in Wiley InterScience (www.interscience.wiley.com). DOI 10.1002/ecjc.20295
多小波域IBS收缩法对退化图像的去噪
小波变换已被用于图像压缩、图像恢复、信号处理和模式识别。在大多数情况下,处理是用一个标量小波函数执行的。但标量小波的缺点是不能同时具有支撑短、正则性、正交性和高消失矩等特性。近年来,人们提出了由多个尺度函数和多个小波函数组成的多小波。由于在多小波变换中需要对多个输入数据进行预处理,因此人们对多小波变换在信号处理和图像处理领域的应用进行了大量的研究。许多工程成果已被报道。然而,使用多小波恢复退化图像的报道很少。这是一个具有未来发展前景的研究领域。针对高斯噪声叠加的退化图像,提出了一种阈值缩减方法,在多小波域的水平、垂直、对角线的每一层以及同一层使用不同的阈值。通过计算机仿真验证了该方法的有效性。©2007 Wiley期刊公司电子工程学报,2009,35 (7):557 - 557;在线发表于Wiley InterScience (www.interscience.wiley.com)。DOI 10.1002 / ecjc.20295
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