14 out of 15 requests were of black people. Facial recognition is notoriously bad with darker skin tones.
Racial Discrimination in Face Recognition Technology https://sitn.hms.harvard.edu/flash/2020/racial-discrimination-in-face-recognition-technology/
Actually, all 15 were of black people. 14 were of black men, one was a black woman.
Zero arrests as well.
New Orleans is pretty black, but thats just impressive.
Who remembers the HP computer that was unable to identify black people? One of my favorite “oooph, that’s not a good look” tech fails of all time. At least the people in that video were having a good laugh about it.
https://www.youtube.com/watch?v=t4DT3tQqgRM
Holy hell, that was 13 years ago.
More recently, there was also Google Photos mistaking a photo of a black couple as “gorillas”, back in 2015.
https://www.bbc.com/news/technology-33347866
On a funnier note, there was also the AI tool turning a pixelated photo of Barack Obama into that of a white man.
Haha. He looks like Mike Nelson.
Yeah, this same exact story keeps coming up for years now just with different names. Why anyone would think that both the ineffectiveness and racial bias in these systems either wouldn’t exist or will somehow go away eventually is beyond me. Just expensive and ineffective mass surveillance for the sake of it…
Minor correction.
15 out of 15 requests were of black people. 14 of those requests were black men and 1 was a black woman.Thank you for your service!
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Yeah, but statistics is a b*tch.
We had a similar technology for a test run some years ago at a train station in Berlin, capital of Germany and largest city in the EU with 3.8M.
The results the government happily touted as a success were devastating. They had a true positive rate of 80% (and this was already cooked since they tested several systems at several locations but only reported the best results), which is really not that good to start with.
But they were also extremely proud of the false
negativepositive rate, which was below 0.1%. That doesn’t sound too bad, does it?Well, let’s see…
True positive means you actually identified the people you were looking for. Now, I don’t know the number of people Berlin’s police is actively looking for, but it’s not that much. And the chances of one of them actually passing that very station are even worse. And out of that, you have 20% undetected. That’s one out of five. Great. If I were a terrorist, I would happily take that chance.
So now let’s have a look at the false
negativepositive rate, which means you incorrectly identified a totally harmless person as a terrorist/infected/whatever. The population for that condition is: everyone passing through that station.Let’s assume there’s a 100k people on any given day (which IIRC is roughly half of what that station in Berlin actually has). 0.1% of 100k is 100 people, every day, who are mistakenly reported as „terrorists“. Yay.
I think you’ve gotten false negative wrong here: False negatives are terrorists who were not identified as such.
D’oh! 🤦♀️ Of course, thanks for correcting this.
How about 15/15?
Yeah. Basicly anything with a lower contrast, with shadows and backgrounds. And because shadows are dark, they have a lower contrast with other dark things.
Discrimination is the wrong word. Technology has no morals or sense of justice. It is bias in the data that developers should have accounted for.
Ask the people who create the data sets that machine learning models train on how they feel about racism and get back to us
It’s totally accurate though. It’s like the definition of systemic racism really. Think about housing or financial policy that disproportionately fails for minorities. They aren’t some Klan manifesto. Instead they just include banal qualifications and exemptions that end up at the same result.
It can be an imported bias/descrimination. I still think that words fair.
Do you have a more accurate word?
I already said it: bias. It’s a common problem with LLMs and other machine learning models that model engineers need to watch out for.
This seems shortsighted. You are basically asking people to police their own biases. That’s a tall ask for something no one can claim immunity from.
I am asking a group of scientists who should be very well-versed in statistics and weights, you know, one of the biggest components in a machine learning model, to account for how biased their data is when engineering their model.
It’s really not a hard ask.
So in other words technology is just as biased as the people who designed it
You need to learn some critical race theory. Racist systems turn innocent intentions into racist actions. If a PhD student trains an AI model on only white people because the university only has white students, then that AI model is going to fail black people because black people were already failed by university admissions. Innocent intention plus racist system equals racist action.
Even CRT would call this “racial bias”, which is exactly what this is.
I’m going to take a wild stab in the dark that all the false positives were black men.
For the same reason that my Echo dot (aka Spotify Bitch) will ignore my wife but cheerfully respond to my mumbled requests from three rooms away. If you make all this shit in Silicon Valley, it will work best for people of a similar demographic to those that work there.
The white liberals building this technology say they’re all progressive yet only surround themselves with people like them and only build products for people like them. A lack of diversity in tech like this is a lack of good testing.
Oh they are progressive. They’ll support Black Lives Matter and sympathise with Iranian women.
But there’s only so much anybody can do when it’s the entire US (and further afield) social structure at fault. It’s the same where I am. I work on a project with 3 other white guys. If I put a job advert up for another programmer, who will apply? 3-4 more white guys.
I agree that it’s a lack of good testing. Especially when you consider that it’ll be mostly used to pick black guys out of a database. And especially so in New Orleans.
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They’re more libertarian than liberal. Anti worker rights, anti consumer rights, and anti taxation.
The only government spending they’re in favour of is government spending and subsidies on tech e.g. Tesla, space X, and the entire military complex.
You haven’t read much about Libertarian policy I see. They are very pro-rights, in fact that is the core of the party platform. Individual liberty is their chief concern, and I applaud their efforts in fighting for our rights and freedom.
Also AI is taught by its creator. Tech has some of it’s most well hidden, bigotted, mid-level white people refusing to critically question their own bias and privilege. There’s a shit tone of that fragile masculinity in the tech industry just hard coding it into it.
There was a guy fired from google for writing a manifesto about how women aren’t ‘wired’ for tech. And that’s just the one that waved his crazy flag out in the open so no one in upper management could easily keep on ignoring it.
While I agree with you 100% that programming can be affected by the programmers biases, there’s a much simpler problem that face recognition was having a hard time overcoming. At least when it was a main topic about a decade ago, sensors were having a lot of problems with the low contrast of some black people’s faces. Anyone who’s had a black friend and was a shutter bug will know what kind of problems you can run into when trying to get a proper exposure and not make a black person disappear completely from a photograph. It was just an inherent limitation of the technology they were using. The last statistics I read was something like between 20 to 30% positive matches, which we know damn well is too low for it to be a workable technology. The success rate on Caucasian and lighter skin tones weren’t even that great. There was still something like a 60% false positive match rate. The software may have gotten better over the past decade but we all know that whether it did or not, they’re still going to use it.
This isn’t image manipulation of the 1990s. You assume it’s set on isolated pixels with massive contrast. It’s calculated by neighbor to achieve the pattern.
This is just a result of inconsideration driving laziness that they’d crop to a median level of the graphic to cater to the skin with less reflection and reads light easier and then releasing it as ‘done’. Software is much more sophisticated than you’re giving credit. But It’s only being used to that potential in such industry as film.
I imagine anyone with more than a mild accent doesn’t even bother using Alexa or whatever except in their native language.
The current state of policing doesn’t deserve to have access to this kinda shit. Hopefully it never will tbh.
Huh. It’s almost like cops are constantly wasting money on bullshit.
only if it’s ours, of course
People may see this as a “see, AI isn’t that good”. We all need to rail against these kinds of programs to the point they are made illegal. Because there are examples around the world of being able to track people with facial recognition (and even by the way someone walks with their face entirely covered 0_0)
I see this as the new Orleans police dep hired a inept contractor (or did an inept job in house).
Around the world, we must fight against all inappropriate data harvesting.
With all the laws trying to put women into basically servitude I’m definitely on team rail against. There are a lot of types of “criminals” that need to be able to get away from law enforcement these days unfortunately. Honestly I’d prefer they just keep being inept for now lol
Well, I could have told you this. (Techdirt has plenty of articles on how facial recognition software mostly generates false positives and ruins the days, if not the lives, of innocents).
On a similar note, the massive camera array of London, to which law-enforcement and state security departments are plugged in, is useful for less than 0.1% of incidents.
The terrifying part to me is that cops across the nation have a long history of seeing that the tech they want to use is unreliable and based on junky science, but they still push it through anyway. Aren’t police dogs about as reliable as a coin-flip when their handlers aren’t nipping at their neck to get them to jump at anything? They don’t care if it’s right as long as they can use it to justify their behavior, so they make it policy.
A lot if forensic “science” is utter bunk. Yet it continues to be used. Having a fair and equitable system was never the point.
Only the drug dogs are ineffective. Bloodhounds and tracking dogs have been a staple of hunting down people, and German retrievers can take a man down effectively as well.
When they are trained with incentives for finding something, instead of incentives to be correct, then they will find something. Same is true for man or beast.
When I walk into the building I work at there is a disclaimer that they are using facial recognition. I don’t know if this is reality or a scare tactic, but based on the industry I would assume they’re just using it for free AI training
You should walk out when you see those signs.
NOPD failing its citizen, one bad idea at a time
I mean, law enforcement occasionally uses polygraph tests in their investigations even though that type of “evidence” isn’t admissible in court and, to be honest, what kind of scientific credibility does a piece of technology like a polygraph even have? They’ll use whatever they can get their hands on even if it’s questionable. Some police forces probably even have a psychic consultant or something. It scares me.
They’ll use it especially if it’s questionable, like handwriting analysis, because the goal is arrests not correct arrests. Trumped up, flimsy, circumstantial “evidence” is the best kind when you don’t actually want to do your job.
Yeah, it goes along with the low standards that define probable cause. Policing, just like a lot of professions, is subject to bean counting when bean counting is not appropriate. Voters love to see statistics that flaunt “more arrests.” Funny how people love numbers without really understanding what the numbers mean.
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lots of nice biometric additions to the database tho, right? 😠
So, why not just write-off the technology as unreliable and move on? Even with the atrocious false positive rate, you would have still expected more than 15 hits in 9 months. This tech has got to be expensive and even the potential ROI on this, if it ever works at all, is very not worth it.
All 15 of the false positives were black people. That’s why they’re keeping it.
NOPD is a joke to begin with.
Surprise surprise!