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首页> 外文期刊>IEEJ Transactions on Electrical and Electronic Engineering >Additive noise reduction in natural images using second-generation wavelet transform hidden Markov models
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Additive noise reduction in natural images using second-generation wavelet transform hidden Markov models

机译:使用第二代小波变换隐藏的马尔可夫模型,自然图像中的添加噪音降低了自然图像

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摘要

Noise reduction or denoising is required for visual improvement or as a preprocessing step for subsequent processing tasks, such as image compression and analysis. Therefore, denoising has become a highly desirable and essential process in multimedia applications. The aim of all denoising processes, especially in natural images, is to uncover the true image from the observed noisy image, ideally removing the additive white Gaussian noise (AWGN) while producing a sharp, useful image without losing finer details. Generally, most of the noise obtained during acquisition and transmission of the natural images is assumed to be AWGN. In this study, we propose a new adaptive denoising framework based on second-generation wavelet domain using hidden Markov models (SGWD-HMMs) with some new local structure, utilizing the fact that the images are nonstationary with singularities and some smooth areas that can be considered as stationary. The dependencies among wavelet coefficients can be efficiently captured by HMMs since the dependence between two wavelet coefficients dies down quickly as their distance becomes big. Quite remarkably, experimental results verify the effectiveness of SGWD-HMMs in benchmark images when compared with other state-of-the-art denoising algorithms. It gives competitive results in the subjective and objective assessments, but it is computationally more expensive. (c) 2016 Institute of Electrical Engineers of Japan. Published by John Wiley & Sons, Inc.
机译:视觉改进或作为后续处理任务(例如图像压缩和分析)所需的降噪或降噪。因此,在多媒体应用中,DeNoising已成为高度理想和基本的过程。所有Denoising过程的目的,尤其是在自然图像中,是要从观察到的嘈杂图像中揭示真实图像,理想地消除了添加剂的白色高斯噪声(AWGN),同时产生尖锐,有用的图像而不会丢失更细节。通常,假定在自然图像的采集和传输过程中获得的大多数噪声被认为是AWGN。在这项研究中,我们使用隐藏的马尔可夫模型(SGWD-HMMS)提出了一个基于第二代小波域的新的自适应剥夺框架,并利用了一些新的局部结构,利用了这些图像是非平稳性和一些平稳的区域的事实被认为是固定的。小波系数之间的依赖性可以被HMM有效地捕获,因为两个小波系数之间的依赖性随着距离变得很大而迅速消失。相当值得注意的是,与其他最先进的Denoising算法相比,实验结果验证了基准图像中SGWD-HMM的有效性。它在主观和客观评估中提供了竞争成果,但在计算上更昂贵。 (c)2016年日本电气工程师研究所。由John Wiley&Sons,Inc。出版

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