Super Resolution Reconstruction via Multiple Frames Joint Learning

P. Wang, Xiyuan Hu, B. Xuan, Jiancheng Mu, Silong Peng
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引用次数: 14

Abstract

This paper presents a novel multi-frame joint learning approach for image super resolution via sparse representation. Based on the assumption that several low-resolution patches degraded from a same high-resolution patch under subpixel translation can preserve similar structures, we can use those similar low-resolution patches together to recover the sparse coefficients for the corresponding high-resolution patch, and the differences between them can help to supply more information.So, unlike the learning-based super resolution algorithm from single image which uses one patch in the learning process, we take into consideration some other well matched patches in 3D domain. Computer simulations demonstrate that, comparing with those single frame learning algorithms, our method will not only restore more details but also can effectively overcome the over learning and is more robust to noise.
基于多帧联合学习的超分辨率重建
提出了一种基于稀疏表示的图像超分辨率多帧联合学习方法。基于亚像素平移下由同一高分辨率斑块退化而来的多个低分辨率斑块可以保持相似结构的假设,我们可以将这些相似的低分辨率斑块组合在一起恢复相应高分辨率斑块的稀疏系数,它们之间的差异有助于提供更多的信息。因此,与基于学习的单幅图像的超分辨率算法在学习过程中使用一个补丁不同,我们在三维域中考虑了其他一些匹配良好的补丁。计算机仿真结果表明,与单帧学习算法相比,该方法不仅可以恢复更多的细节,而且可以有效克服过度学习,对噪声具有更强的鲁棒性。
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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