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Talk:Comparison gallery of image scaling algorithms

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How about add AMD FSR EASU pass ?

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there is a CLI utility https://github.com/GPUOpen-Effects/FidelityFX-CLI — Preceding unsigned comment added by 187.18.43.232 (talk) 16:53, 23 December 2021 (UTC) [reply ] 


How about neural-enhance???

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https://github.com/alexjc/neural-enhance — Preceding unsigned comment added by טחינה (talkcontribs) 04:59, 5 April 2019 (UTC) [reply ]

@טחינה look bro, I think MAYBE this already fits in some section. 45.164.35.228 (talk) 00:29, 29 July 2023 (UTC) [reply ]


Content misplaced with last edit?

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Not sure why, but the last revision of the page ( 02:57, 15 June 2020‎ ) removed the entries on AI methods. From the edit description it seems it is because there was no description text for them in the tables. The edit also mentions not scaled images (not sure what that means, all images were 160x160). If no further explanation is given in the next couple days I will edit back the entries with a brief description. — Preceding unsigned comment added by Majaldm (talkcontribs)


AI upscalers update

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I have been researching AI up-scalers recently, and this page needs bringing up to date. I propose adding a whole section of the various AI based upscalers and an explanation of why they beat older methods (as they make educated guesses based on previous knowledge).

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