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基于变分非局部均值方法的斑点去噪

Speckle denoising by variant nonlocal means methods.

作者信息

Tounsi Yassine, Kumar Manoj, Nassim Abdelkrim, Mendoza-Santoyo Fernando, Matoba Osamu

出版信息

Appl Opt. 2019 Sep 10;58(26):7110-7120. doi: 10.1364/AO.58.007110.

Abstract

This study aims to demonstrate the performances of nonlocal means (NLM) and their variant denoising methods, mainly focusing on NLM-shaped adaptive patches and several NLM-reprojection schemes for speckle noise reduction in amplitude and phase images of the digital coherent imaging systems. In the digital coherent imaging systems such as digital speckle pattern interferometry, digital holographic interferometry, etc., the image quality is severely degraded by additive uncorrelated speckle noise, due to the coherent nature of the light source, and therefore limits the development of several applications of these imaging systems in many fields. NLM and its variant denoising methods are employed to denoise the intensity/phase images obtained from these imaging systems, and their effectiveness is evaluated by considering various parameters. The performance comparison of these methods with other existing speckle denoising methods is also presented. The performance of these methods for speckle noise reduction is quantified on the basis of two criteria matrices, namely, the peak-to-signal noise ratio and the image quality index. Based on these criteria matrices, it is observed that these denoising methods have the ability to improve the intensity and phase images favorably in comparison to other speckle denoising techniques, and these methods are more effective and feasible in speckle-noise reduction.

摘要

本研究旨在展示非局部均值(NLM)及其变体去噪方法的性能,主要聚焦于NLM形状的自适应补丁以及几种用于数字相干成像系统的幅度和相位图像散斑噪声降低的NLM重投影方案。在数字散斑图案干涉术、数字全息干涉术等数字相干成像系统中,由于光源的相干特性,图像质量会因加性不相关散斑噪声而严重下降,从而限制了这些成像系统在许多领域的多种应用的发展。采用NLM及其变体去噪方法对从这些成像系统获得的强度/相位图像进行去噪,并通过考虑各种参数来评估其有效性。还给出了这些方法与其他现有散斑去噪方法的性能比较。基于两个标准矩阵,即峰值信噪比和图像质量指数,对这些方法的散斑噪声降低性能进行了量化。基于这些标准矩阵,可以观察到与其他散斑去噪技术相比,这些去噪方法能够有效地改善强度和相位图像,并且在散斑噪声降低方面更有效、更可行。

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