Multi-Objective Reptile Search Algorithm Based Effective Image Deblurring and Restoration

G. S. Yogananda, A. Babu
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引用次数: 0

Abstract

Images are frequently affected because of blurring, data loss occurred by sampling and noise occurrence. The images are getting blurred because of object movement in the scenario, atmospheric misrepresentations and optical aberrations. The main objective of image restoration is to evaluate the original image from the corrupted data. To overcome this issue, the Multi-Objective Reptile Search Algorithm is proposed for performing an effective Image Deblurring and Restoration (MORSA-IDR). The proposed MORSA is used in two different processes such as threshold and kernel parameter calculation. In that, threshold values are used for detecting and replacing the noisy pixel removal using Deep Residual Network (DRN), and estimation of kernel is performed for deblurring the images. The main objective of the proposed MORSA-IDR is to enhance the process of deblurring for recovering low-level contextual information. The MORSA-IDR is evaluated using Peak SignalNoise Ratio (PSNR) and structural similarity index (SSIM). The existing research such as Enhanced Local Maximum Intensity (ELMI) prior and Deep Unrolling for Blind Deblurring (DUBLID) are used to evaluate the MORSA-IDR.The PSNR of MORSA-IDR for image 6 is 30.98 dB which is high when compared to the ELMI and DUBLID.
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基于多目标爬行动物搜索算法的有效图像去模糊与恢复
图像经常由于模糊、采样导致的数据丢失和噪声的出现而受到影响。由于场景中的物体移动、大气失真和光学像差,图像变得模糊。图像恢复的主要目的是从损坏的数据中评估原始图像。为了克服这个问题,提出了一种多目标爬行动物搜索算法来执行有效的图像去模糊和恢复(MORSA-IDR)。所提出的MORSA用于两个不同的过程,如阈值和核参数计算。其中,使用深度残差网络(DRN)使用阈值来检测和替换噪声像素去除,并执行核估计来对图像进行去模糊。所提出的MORSA-IDR的主要目标是增强用于恢复低级上下文信息的去模糊过程。MORSA-IDR使用峰值信噪比(PSNR)和结构相似性指数(SSIM)进行评估。现有的研究如增强局部最大强度(ELMI)先验和深度展开盲去模糊(DUBLID)被用于评估MORSA-IDR。图像6的MORSA-ID的PSNR为30.98dB,与ELMI和DUBLID相比是高的。
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