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Regularized single-image super-resolution based on progressive gradient estimation

机译:基于渐进梯度估计的正则化单图像超分辨率

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Gradient domain optimization is widely used in regularized image super-resolution, in which the gradient of high resolution (HR) is estimated for calculating the regularization energy. In this paper, a progressive gradient estimation (PGE) is proposed. In PGE, the gradient of the reconstructed HR image in the previous round of optimization is taken as the estimated gradient in the current round. Then, the estimated image gradient is progressively improved. When the estimated image gradient converges, a high quality HR image can be reconstructed. Experimental results show that the reconstructed HR images by PGE have good qualitative and quantitative performances.
机译:梯度域优化广泛用于正则化图像超分辨率中,其中估计高分辨率(HR)的梯度以计算正则化能量。在本文中,提出了一种渐进梯度估计(PGE)。在PGE中,将前一轮优化过程中重建的HR图像的梯度作为当前轮次中的估计梯度。然后,逐渐改善估计的图像梯度。当估计的图像梯度收敛时,可以重建高质量的HR图像。实验结果表明,PGE重建的HR图像具有良好的定性和定量性能。

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