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. Optic-flow and . Sr, Motion field estimated from low-resolved images of data set #1 at initial time. Top: estimates for state-of-the-art algorithms [57] (left) and, p.61

. Fig, Reconstruction of three super-resolved images xt (3-rd row), optic-flow fields dt (1-st row) and warping errors t (2-nd row) for data set #3 corresponding to t = 3 (left) t = 5 (middle) and t = 7 (right) True images (4-th row) and associated PSNR (computed without quantification of the estimates and including the image borders) are displayed below