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An Adaptive Wavelet Shrinkage and Its Application in Image De-noising

机译:一种自适应小波收缩及其在图像去噪中的应用

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In this paper an adaptive method of shrinkage of the wavelet coefficients is presented. In the method, the wavelet coefficients are divided into two classes by a threshold. One class of them with the smaller absolute values at a scale is transformed with a proportional relation, another class with the larger absolute values at the same scale is transformed with a linear function. The threshold and the coefficient in the proportional relation or in the linear function are determined by the principle of minimizing the Stein's unbiased risk estimate. In the paper, the method of estimation of the threshold and the coefficient is given and the adaptive method of shrinkage of the wavelet coefficients is applied to image denoising. Examples in the paper show that the presented method has an advantage over SureShrink from the point of view of both the Stein's unbiased risk estimate and the signal-to-noise ratio. In addition, the method takes almost the same computing time as the SureShrink in image denoising.
机译:本文提出了一种自适应的小波系数收缩方法。在该方法中,小波系数通过阈值划分为两个类。它们的一类以比例关系转换为比例的较小的绝对值,用线性函数转换具有相同刻度的较大绝对值的另一个类。比例关系或线性函数中的阈值和系数是通过最小化Stein的无偏的风险估计的原理确定的。在本文中,给出了阈值和系数的估计方法,并且将小波系数的收缩的自适应方法应用于图像去噪。本文的示例表明,通过斯坦因的无偏的风险估计和信噪比,呈现的方法从Sureshrink具有优势。此外,该方法采用图像去噪中的SURESHRINK几乎与SURESHRINK相同的计算时间。

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