But there is no obvious slope for computer vision - we need an infrastructure of cameras and bandwidth before it becomes ubiquitous
So I struggle to see the profitable intermediate businesses between here and there - and that troubles me.
There are many tasks where the current levels of accuracy are sufficient (eg, registration plate recognition), and as recognition slowly improves more and more tasks become possible.
Pete Warden has written extensively on this topic[1]. His "hipster detection" algorithm is quite inaccurate by any conventional measurement, but is accurate enough to be useful.
[1] http://petewarden.com/2014/07/31/how-to-get-computer-vision-...
Who needs bandwidth when you can push your models to the local device with a small update? They can just send back batched statistics when a high bandwidth network is available. After all, cars need gas or a charge sometime.
It is just a binary patch to change some weights or an architecture layout, which is not so different from updating any other application.
Most businesses are covered with cameras as well as hiring people who's only job is to watch those cameras for anomalous activity - I think there are more opportunities than you realize. Farming is another indistry where this technology could be useful.
Does this not nearly amount to "population-scale mass surveillance algorithms"? Do people not feel this is accelerating negative social impacts of technology?
Is it merely a coincidence that winning teams include many from countries criticized for their totalitarian social contracts: Hong Kong University of Science and Technology, National University of Singapore, Microsoft Research China, Southeast University (China), Chinese Academy of Sciences? There's also a presence from Holland.
Oh, and guess who won the category "with additional training data"? Google.
Come on people, we can do better than this! SHAME SHAME SHAME.
Ultimately, the thing stopping mass surveillance is not a limitation of technology, but of policy. For better or worse, the days of "they don't have the resources to do that" have been replaced by "they aren't allowed to do that".
If you have access to the raw packets going to and from every device, and the accelerometer in almost everyone's pocket, identification can be much simpler than doing full face recognition all the time.
I seriously doubt the dawn of the surveillance state will be heralded by deep neural networks recognizing faces in the streets - hardware and software backdoors on phones are cheaper and more effective.
It's not a stretch of the imagination to see these things being sold to airports, seaports, mass transit stations, and storefronts as a security feature. Next, your physical mail could be scanned. None of that seems politically unlikely in the current climate.
Google is hardly a monopoly here and "open data initiatives" will expand in scope soon.
It's not technology that sucks, it's how people use it. Technology is just a multiplier on people's ability to do things. It's too bad that so many people are up to no good in the first place. No need to become a Luddite though.
GPU, not G.P.U. OpenCV, not Open CV
c'mon NYT, act like you know.