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Image denoising in dual contourlet domain using hidden Markov tree models

机译:使用隐马尔可夫树模型在双轮廓域中的图像去噪

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Used in a wide variety of transform based statistical image processing techniques, the hidden Markov tree (HMT) model with Gaussian mixtures is typically employed to capture the intra-scale and inter-scale dependencies between the magnitudes of the transform coefficients. But, the conventional model does not consider the signs of the transform coefficients. In this paper, a new HMT model which exploits mixtures of one-sided exponential densities is used to consider the signs of transform coefficients. The present study has two main contributions: 1) for the first time, HMT with mixtures of one-sided exponential densities is used to denoise images, and 2) a new efficient model formed by two one-sided exponential densities and one Gaussian density is proposed. In addition, the proposed method uses the dual contourlet transform (DCT) which is formed by the combination of the directional filter bank (DFB) and the dual tree complex wavelet transform (DTCWT). This transform is (nearly) shift-invariant and is computationally less expensive than the NSCT (nonsubsampled contourlet transform). Thus, it is fast and efficient when applied to image processing tasks. Experimental results on several standard grayscale images show that the proposed method is superior to some state-of-the-art denoising techniques in terms of both subjective and objective criteria. (C) 2017 Elsevier Inc. All rights reserved.
机译:用于基于变换的各种变换的统计图像处理技术,使用高斯混合的隐马尔可夫树(HMT)模型通常用于捕获变换系数的幅度之间的帧内和刻度依赖性。但是,传统模型不考虑变换系数的迹象。在本文中,利用单面指数密度混合的新的HMT模型用于考虑变换系数的迹象。本研究具有两个主要贡献:1)首次,具有单面指数密度的混合物的HMT用于去噪,2)通过两个单侧指数密度和一个高斯密度形成的新高效模型建议的。另外,所提出的方法使用由方向滤波器组(DFB)和双树复合小波变换(DTCWT)的组合形成的双轮廓换变换(DCT)。该变换(近)换档不变,并且计算地比NSCT(非管道采样轮廓变换)昂贵。因此,当应用于图像处理任务时,它是快速有效的。若干标准灰度图像上的实验结果表明,在主观和客观标准方面,该方法优于一些最先进的去噪技术。 (c)2017年Elsevier Inc.保留所有权利。

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