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MLP neural network super-resolution restoration for the undersampled low-resolution image

机译:欠采样低分辨率图像的MLP神经网络超分辨率恢复

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摘要

It is difficult to achieve restoration of high frequency information by the traditional algorithms using an undersampled and degraded low-resolution image. Nonlinear algorithms provide a better solution to above problem. As a nonlinear and real-time processing method, a MLP neural network super-resolution restoration for the undersampled and degraded low-resolution image is proposed. Experimental results demonstrate that the proposed approach can achieve super-resolution and a good restored image.
机译:利用欠采样和降级的低分辨率图像,通过传统算法很难实现高频信息的恢复。非线性算法为上述问题提供了更好的解决方案。作为一种非线性的实时处理方法,提出了一种针对欠采样和退化的低分辨率图像的MLP神经网络超分辨率恢复方法。实验结果表明,该方法可以实现超分辨率和良好的还原图像。

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