A Novel Image Recovery from Moving Water Surface Using Multi-Objective Bispectrum Method

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING International Journal of Image and Graphics Pub Date : 2023-06-05 DOI:10.1142/s0219467824500384
K. P. Kumar, M. Rao, M. Venkatanarayana
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Abstract

Nowadays, the image degradation field suffers from several challenges while processing underwater color images including color distortion and image blurring due to the scattering media. Moreover, to get appropriate multi-frame super-resolution images, there is essential for recovering a better quantity of images. Traditionally, the shift among images is directly evaluated when considering the under-sampled Low-Resolution (LR) images. On the other hand, the high-frequency LR image faces unreliability owing to the aliasing consequences of sub-sampling, but it will also degrade the recovery accuracy. This task design implements a novel image recovery model from the moving water surface by adopting the multi-objective adaptive higher-order spectral analysis. Image pre-processing, lucky region selection, and image recovery are the three main phases of this model. The bicoherence method and dice coefficient method are adopted for performing the lucky region selection. Finally, the adoption of the multi-objective adaptive bispectra method is used for performing the image recovery from the moving water surface. The improved Adaptive Fitness-oriented Random number-based Galactic Swarm Optimization (AFR-GSO) algorithm is used for optimizing the constraints of the bispectrum method. The experimental results verify the enrichment of image quality by the proposed model over the existing techniques.
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一种新的基于多目标双谱法的运动水面图像恢复方法
目前,在处理水下彩色图像时,图像退化领域面临着一些挑战,包括由于散射介质造成的颜色失真和图像模糊。此外,为了获得合适的多帧超分辨率图像,必须恢复更多的图像。传统上,在考虑欠采样低分辨率(LR)图像时,直接评估图像之间的移动。另一方面,由于子采样的混叠后果,高频LR图像存在不可靠性,但也会降低恢复精度。本课题设计采用多目标自适应高阶光谱分析实现了一种新的运动水面图像恢复模型。图像预处理、幸运区域选择和图像恢复是该模型的三个主要阶段。采用双相干法和骰子系数法进行幸运区选择。最后,采用多目标自适应双光谱方法对运动水面进行图像恢复。采用改进的面向自适应适应度的基于随机数的银河群优化算法(AFR-GSO)对双谱法的约束条件进行优化。实验结果验证了该模型比现有技术更丰富了图像质量。
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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