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Translation-Invariant Contourlet Transform and Its Application to Image Denoising

机译:平移不变轮廓波变换及其在图像去噪中的应用

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摘要

Most subsampled filter banks lack the feature of translation invariance, which is an important characteristic in denoising applications. In this paper, we study and develop new methods to convert a general multichannel, multidimensional filter bank to a corresponding translation-invariant (TI) framework. In particular, we propose a generalized algorithme À trous, which is an extension of the algorithme À trous introduced for 1-D wavelet transforms. Using the proposed algorithm, as well as incorporating modified versions of directional filter banks, we construct the TI contourlet transform (TICT). To reduce the high redundancy and complexity of the TICT, we also introduce semi-translation-invariant contourlet transform (STICT). Then, we employ an adapted bivariate shrinkage scheme to the STICT to achieve an efficient image denoising approach. Our experimental results demonstrate the benefits and potential of the proposed denoising approach. Complexity analysis and efficient realization of the proposed TI schemes are also presented.
机译:大多数子采样滤波器组缺乏平移不变性的特征,这是降噪应用中的重要特征。在本文中,我们研究和开发了将一般的多通道,多维滤波器组转换为相应的平移不变(TI)框架的新方法。特别是,我们提出了一种通用算法,它是为一维小波变换引入的算法的扩展。使用提出的算法,并结合定向滤波器组的修改版本,我们构造了TI Contourlet变换(TICT)。为了减少TICT的高冗余性和复杂性,我们还引入了半平移不变式轮廓波变换(STICT)。然后,我们对STICT采用适应性的二元收缩方案,以实现有效的图像降噪方法。我们的实验结果证明了所提出的降噪方法的好处和潜力。还介绍了提出的TI方案的复杂性分析和有效实现。

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