Automated Image Denoising Model: Contribution Towards Optimized Internal and External Basis

S. E. Kuzhali, D. Suresh
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Abstract

For handling digital images for various applications, image denoising is considered as a fundamental pre-processing step. Diverse image denoising algorithms have been introduced in the past few decades. The main intent of this proposal is to develop an effective image denoising model on the basis of internal and external patches. This model adopts Non-local means (NLM) for performing the denoising, which uses redundant information of the image in pixel or spatial domain to reduce the noise. While performing the image denoising using NLM, “denoising an image patch using the other noisy patches within the noisy image is done for internal denoising and denoising a patch using the external clean natural patches is done for external denoising”. Here, the selection of optimal block from the entire datasets including internal noisy images and external clean natural images is decided by a new hybrid optimization algorithm. The two renowned optimization algorithms Chicken Swarm Optimization (CSO), and Dragon Fly Algorithm (DA) are merged, and the new hybrid algorithm Rooster-based Levy Updated DA (RLU-DA) is adopted. The experimental results in terms of some relevant performance measures show the promising results of the proposed model with remarkable stability and high accuracy.
自动图像去噪模型:对优化内外部基础的贡献
为了处理各种应用的数字图像,图像去噪被认为是一个基本的预处理步骤。在过去的几十年里,各种各样的图像去噪算法被引入。本文的主要目的是建立一种有效的基于内部和外部补丁的图像去噪模型。该模型采用非局部均值(Non-local means, NLM)进行去噪,利用图像在像素域或空间域的冗余信息去噪。在使用NLM进行图像去噪时,“使用噪声图像内的其他噪声块对图像patch进行去噪以进行内部去噪,使用外部干净的自然块对patch进行去噪以进行外部去噪”。采用一种新的混合优化算法,从包含内部噪声图像和外部干净自然图像的整个数据集中选择最优块。将鸡群算法(Chicken Swarm optimization, CSO)和蜻蜓算法(Dragon Fly Algorithm, DA)两种著名的优化算法进行合并,采用了基于公鸡的Levy Updated DA (RLU-DA)混合算法。相关性能指标的实验结果表明,该模型具有良好的稳定性和较高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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