True, but that just turns into a cat an mouse game. Also, one the photo is up, the background doesn’t change how its blurred with time --> wait long enough and a technique to unblur will be developed.
I do remember 1-2 years ago there is a paper (or model?) that reverse blured images. It’s similar to how ML based object remover and inpainting works. Granted it only works for specific blurring algo.
Some blues are reversible, and some aren’t. Some of them do a statistical rearrangement of the data in the area being blurred that’s effectively reversible.
Think shredding a document. It’s a pain and it might take a minute, but it’s feasible to get the original document back, give or take some overlapping edges and tape.
Other blurs combine, distort, and alter the image contents such that there’s nothing there to recombine to get the original.
A motion blur or the typical “fuzzy” blur can be directly reversed for the former, and statistical techniques and AI tools can be used on the later to reconstruct, because the original data is still there, or there enough that you can make guesses based on what’s there and context.
Pixelating the area does a better job because it actually deletes information as opposed to just smearing it around, but tools can still pick out lines and shapes well enough to make informed guesses.
Some blurs however create a random noise over the area being blurred, which is then tweaked to fit the context of whatever was being blurred.
Something like that is impossible to reverse because the information simply is not there.
It’s like using generative AI to “recover” data cropped from an image. At that point it’s no longer recovery, but creation of possible data that would fit there.
The tools aren’t magical, they’re still ultimately bound by the rules of information storage.
Yeah, for the pic you used as example, the tool will just create something that fits. Not really “unblur” the image but guess what it would be with the info it have. It will be very likely not the same face versus the original.
However, recreating background maybe easier and accurate enough for a geo guesser or a ML model to figure out roughly where the image was taken.
You do realize that a lot of image recognition was done on scaled down images? Some techniques would even blur the images on purpose to reduce the chance of confusion. Hell, anti-aliasing makes text seem more readable by adding targeted blur.
Deblurring is guessing and if you have enough computing power with some brain power (or AI), you can reduce the number of required guesses by erasing improbable guesses.
There are techniques to deblur. It’s even how a prolific child sex offender was caught.
Anti Commercial-AI license
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True, but that just turns into a cat an mouse game. Also, one the photo is up, the background doesn’t change how its blurred with time --> wait long enough and a technique to unblur will be developed.
Anti Commercial-AI license
deleted by creator
I do remember 1-2 years ago there is a paper (or model?) that reverse blured images. It’s similar to how ML based object remover and inpainting works. Granted it only works for specific blurring algo.
Some blues are reversible, and some aren’t. Some of them do a statistical rearrangement of the data in the area being blurred that’s effectively reversible.
Think shredding a document. It’s a pain and it might take a minute, but it’s feasible to get the original document back, give or take some overlapping edges and tape.
Other blurs combine, distort, and alter the image contents such that there’s nothing there to recombine to get the original.
A motion blur or the typical “fuzzy” blur can be directly reversed for the former, and statistical techniques and AI tools can be used on the later to reconstruct, because the original data is still there, or there enough that you can make guesses based on what’s there and context.
Pixelating the area does a better job because it actually deletes information as opposed to just smearing it around, but tools can still pick out lines and shapes well enough to make informed guesses.
Some blurs however create a random noise over the area being blurred, which is then tweaked to fit the context of whatever was being blurred.
Something like that is impossible to reverse because the information simply is not there.
It’s like using generative AI to “recover” data cropped from an image. At that point it’s no longer recovery, but creation of possible data that would fit there.
The tools aren’t magical, they’re still ultimately bound by the rules of information storage.
Yeah, for the pic you used as example, the tool will just create something that fits. Not really “unblur” the image but guess what it would be with the info it have. It will be very likely not the same face versus the original.
However, recreating background maybe easier and accurate enough for a geo guesser or a ML model to figure out roughly where the image was taken.
You do realize that a lot of image recognition was done on scaled down images? Some techniques would even blur the images on purpose to reduce the chance of confusion. Hell, anti-aliasing makes text seem more readable by adding targeted blur.
Deblurring is guessing and if you have enough computing power with some brain power (or AI), you can reduce the number of required guesses by erasing improbable guesses.
Anti Commercial-AI license
deleted by creator
And thus programming data into existence.
Anti Commercial-AI license