acm-header
Sign In

Communications of the ACM

ACM TechNews

The AI Learned to Hide Data From Its Creators to Cheat at Tasks They Gave It


View as: Print Mobile App Share:
The neural network used steganography in order to speed up the process.

A neural network learned to "hide" information about a source image into the images it generates in a nearly imperceptible, high-frequency signal.

Credit: Zapp2Photo/Shutterstock

Researchers at Stanford University and Google have developed a neural network trained to transform aerial images into street maps and then back again, but were surprised to discover that details left out of the final product reappeared when they told the system to revert back to the original image.

CycleGan learned to "hide" information about a source image within the images it generated via a nearly imperceptible, high-frequency signal.

The trick ensures the generator can recover the original sample and thus satisfy the cyclic consistency requirement, while the generated image remains realistic.

The researchers found CycleGan created a way to replicate details in a map by picking up on subtle changes in color that the human eye cannot detect.

In essence, it did not learn how to create a copy of the map from scratch; it simply replicated the features of the original into the noise patterns of the other.

From Daily Mail (U.K.)
View Full Article

 

Abstracts Copyright © 2019 SmithBucklin, Washington, DC, USA


 

No entries found

Sign In for Full Access
» Forgot Password? » Create an ACM Web Account