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Guide To Image Super-Resolution By ESRGAN

Single image super-resolution has fundamental low-level vision problems. The SISR aims to recover...
Most current super-resolution methods rely on a pair of low and high-resolution images to train a network in a supervised manner. However, in real-world scenarios, such pairs are not available. Instead of directly addressing this problem, most tasks employ the popular bicubic down-sampling strategy to generate low-resolution images artificially. Unfortunately, this strategy introduces more artifacts, removing natural incense and other real-world characteristics. Moreover, super-resolution networks trained on such bicubic images suffer many struggles to generalize the natural images.     Single image super-resolution has fundamental low-level vision problems. The SISR aims to recover the High-Resolution images from a single Low-Resolution image. Various network archit
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Picture of Vijaysinh Lendave
Vijaysinh Lendave
Vijaysinh is an enthusiast in machine learning and deep learning. He is skilled in ML algorithms, data manipulation, handling and visualization, model building.
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