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by 0x12A
454 days ago
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Author here -- Generally in single image super-resolution, we want to learn a prior over natural high-resolution images, and for that a large and diverse training set is beneficial. Your suggestion sounds interesting, though it's more reminiscent of multi image super-resolution, where additional images contribute additional information, that has to be registered appropriately. That said, our approach is actually trained on a (by modern standards) rather small dataset, consisting only of 800 images. :) |
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But for "normal" photography, it is either pre-trained ML, pulling external data in, or something "dumb" like anisotrophic blurring.