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Yes, I'm not trying to say that software is useless for assisting in approximating detail for facial recognition, but software like this, where in goes a single image and out pops a single "clean and enhanced" image, with no manual guidance in between, sounds like it would be fantastically misleading. Somehow you have to express to the decision-makers (investigators, prosecutors, jury) that there is error and guesswork involved in this process, lest you end up with techno-magic like polygraph tests that are popularly understood to produce evidence that they really don't.


The "manual guidance in between" is where CSI is so incredibly screwed up though (toolmark and fingerprint examiners, polygraph operators, etc). The only criminal science that is actually reliable has cut humans out of the loop (dna, forensic document analysis, computer forensics). Even with the reliable methods, they are still probabilistic, which is exactly how the software we are discussing would work. As far as misleading decision-makers, well that is a more fundamental problem with the justice system... we really need to cut as much human judgement out of the process as possible. I'm looking forward to the day when speech recognition and language parsing are solved problems, because formal logic will fix this situation pretty quickly.


It's great to cut out humans from the loop where we can, but we cannot do so here. As you say, upscaling is lossy (de)compression, and no amount of math is going to reveal information that fundamentally does not exist in a source image. Furthermore, neural networks are trivially fooled: http://news.cornell.edu/stories/2015/03/images-fool-computer... . I'd actually trust a trained neural network far less than a human, just like I'd trust the upscaling technique in this article far less than a human artist. Speed and automation are their advantages compared to trained humans, not quality.


> As you say, upscaling is lossy (de)compression

As are eye witness accounts, which have been demonstrated to be pretty useless.

As are fingerprints, a tiny sliver of (maybe?[0]) uniquely identifiable information.

As are autopsies, where the state of the corpse is maintained only in whatever the examiner writes down, x-rays, or snaps a polaroid of.

As are bite marks...

So you've got all that, plus your lawyer's sweaty appeals to emotion in a group of 12 people - of whom four will express a belief in haunted houses and two will claim to have actually seen a ghost [1]. You'd prefer that over an application of math that can be challenged and rationally discussed?

> Furthermore, neural networks are trivially fooled...

A neural network was fooled with the equivalent of a hash collision, one guess as to how to fix that :)

> I'd actually trust a trained neural network far less than a human...

I can't think of a single person I'd trust over math, once maybe Bill Cosby - but not anymore.

> Speed and automation are their advantages compared to trained humans, not quality.

Well in this context I'd say that impartiality and repeatability are pretty important, which are characteristics more likely to describe a math model than an individual with the qualifications of a mailing address - and all the training that can be packing into a 20 minute vhs about civic duty played on a wheeled TV.

[0] http://www.academia.edu/447251/The_Current_Position_of_Finge...

[1] http://www.pewresearch.org/fact-tank/2013/10/30/18-of-americ...




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