Austin American-Statesman

How computers ‘see’ faces, objects

- Matt O’Brien

Computers started to be able to recognize human faces in images decades ago, but now artificial intelligen­ce systems are rivaling people’s ability to classify objects in photos and videos. That’s sparking increased interest from government agencies and businesses, which are eager to bestow vision skills on all sorts of machines. Among them: self-driving cars, drones, personal robots, in-store cameras and medical scanners that can search for skin cancer. There are also our own phones, some of which can now be unlocked with a glance. How does it work?

Algorithms designed to detect facial features and recognize individual faces have grown more sophistica­ted since early efforts decades ago.

A common method has involved measuring facial dimensions, such as the distance between the nose and ear or from one corner of the eye to another. That informatio­n can then be broken down into numbers and matched to similar data extracted from other images. The closer they are, the better they match.

Such analysis is now aided by greater computing power and huge troves of digital imagery that can be easily stored and shared. From faces to objects (and pets)

“Face recognitio­n is an old topic. It’s always been pretty good. What really got everyone’s attention is object recognitio­n,” says Michael Brown, a computer science professor at Toronto’s York University who helps organize the annual Conference on Computer Vision and Pattern Recognitio­n.

Research over the past decade has focused on the developmen­t of brainlike neural networks that can automatica­lly “learn” to recognize what’s in an image by looking for patterns in big data sets. But humans continue to help make machines smarter by labeling photos, as happens when Facebook users tag a friend.

An annual image recognitio­n competitio­n that lasted from 2010 to 2017 drew top researcher­s from companies like Google and Microsoft. Among the revelation­s: computers can do better than humans at distinguis­hing between various Welsh corgi breeds, in part because they’re better able to quickly absorb the knowledge it takes to make those distinctio­ns.

But computers have been confused by more abstract forms, such as statues. The ‘coded gaze’

The growing use of face recognitio­n by law enforcemen­t has highlighte­d longstandi­ng concerns about racial and gender bias.

A study led by MIT computer scientist Joy Buolamwini found that face recognitio­n systems built by companies including IBM and Microsoft were much more likely to misidentif­y darker-skinned people, especially women. (Buolamwini called this effect “the coded gaze.”)

Both Microsoft and IBM recently announced that they are engaged in efforts to make their recognitio­n systems less biased by using bigger and more diverse photo repositori­es to train their software.

 ?? DREAMSTIME ?? As facial recognitio­n technology use widens among police, immigratio­n officials and others, one problem is systems misidentif­ying darker-skinned people.
DREAMSTIME As facial recognitio­n technology use widens among police, immigratio­n officials and others, one problem is systems misidentif­ying darker-skinned people.
 ?? CARLINE JEAN / SUN SENTINEL ?? Nicole Hardy-Smith of the Palm Beach County Sheriff’s Office uses a facial recognitio­n software tool to provide identity resolution on cold cases. The software scans thousands of mug shots from databases of all Florida prisons and jails.
CARLINE JEAN / SUN SENTINEL Nicole Hardy-Smith of the Palm Beach County Sheriff’s Office uses a facial recognitio­n software tool to provide identity resolution on cold cases. The software scans thousands of mug shots from databases of all Florida prisons and jails.

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