Performance analysis on multi-frame image Super-Resolution via sparse representation

Chairat Kraichan, S. Pumrin
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引用次数: 3

Abstract

This paper proposes quality analysis of multi-frame Super-Resolution. We compare three algorithms of multi-frame Super-Resolution such as Bilateral Total Variation, Dual-Dictionary, and Kernel based Principal Component Analysis (KPCA). This research focuses on solving the problem in difference texture images. We experiment on Baboon, Lena, Eye, and Access Road. The algorithms are applied on 16 frames interval at 100 iterations. The experimental results show Peak Signal to Noise Ratio (PSNR) versus the number of iterations. The Bilateral Super-Resolution has the lowest number of iterations with high PSNR in low texture images. The experimental results also show that PSNR drops in Kernel Principal Component Analysis approach. In addition, we have found that the blurring process is an ill posed condition for low texture images.
基于稀疏表示的多帧图像超分辨率性能分析
提出了多帧超分辨率图像的质量分析方法。我们比较了双边全变分、双字典和基于核的主成分分析(KPCA)三种多帧超分辨率算法。本研究的重点是解决不同纹理图像中的问题。我们在狒狒,莉娜,眼睛和通道路上做实验。算法以16帧为间隔,进行100次迭代。实验结果显示了峰值信噪比(PSNR)与迭代次数的关系。双侧超分辨率在低纹理图像中具有最低的迭代次数和较高的PSNR。实验结果还表明,核主成分分析方法的PSNR有所下降。此外,我们发现模糊过程是低纹理图像的病态条件。
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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