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Reconstruction of High Resolution image from a set of blurred, warped, undersampled, and noisy measured images

机译:从一组模糊,翘曲,欠采样和嘈杂的测量图像重建高分辨率图像

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This paper proposes an algorithm to reconstruct a High Resolution (HR) image from a set of blurred, warped, undersampled, and noisy measured images. The proposed algorithm uses the affine block-based algorithm in the maximum likelihood (ML) estimator. It is tested using synthetic images, where the reconstructed image can be compared with its original. A number of experiments were performed with the proposed algorithm to evaluate its behavior before and after noise addition and also compared with its behavior after noise removal. The proposed system results show that the enhancement factor is better after noise removal than in case of no noise is additive, and show that PSNR difference is better in comparison with the results of another system.
机译:本文提出了一种从一组模糊,翘曲,欠采样和噪声测量图像重建高分辨率(HR)图像的算法。所提出的算法在最大似然(ML)估计器中使用基于仿射块的算法。它使用合成图像测试,其中可以将重建图像与其原件进行比较。使用所提出的算法进行许多实验,以评估噪声添加前后的行为,并且还与噪声去除后的行为相比。所提出的系统结果表明,在没有噪声的情况下,增强因子比在没有噪声的情况下更好,并且显示PSNR差与另一个系统的结果相比更好。

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