FB pixel

Researchers develop “digital watermarks” to detect deepfakes

Categories Biometric R&D  |  Biometrics News
 

Researchers from the Tandon School of Engineering at New York University are developing methods to identify when an image has been altered using artificial intelligence and “digital watermarks” to help detect deepfakes.

A prototype imaging pipeline increased the chances of detecting manipulation from roughly 45 percent to over 90 percent in tests, without sacrificing image quality, according to the announcement.

Deepfakes are a growing problem, with Samsung researchers recently developing a way to generate them from less data, and Facebook doubling down on fake media as a protected form of free speech.

In an approach pioneered by Department of Computer Science and Engineering Research Assistant Professor Pawel Korus, a typical photo development pipeline was replaced by a neural network, which embeds carefully crafted artifacts which are highly sensitive to manipulation directly into the image at acquisition.

“Unlike previously used watermarking techniques, these AI-learned artifacts can reveal not only the existence of photo manipulations, but also their character,” Korus says.

The process can be performed in-camera, and survives the distortion of online photo sharing services. The technology is open-source.

Most other attempts to analyze image authenticity rely on the final image, but the NYU researchers reasoned that most photos now use machine learning in image acquisition to normalize elements like lighting and stability.

“We have the opportunity to dramatically change the capabilities of next-generation devices when it comes to image integrity and authentication,” says NYU Tandon Professor of Computer Science Nasir Memon, who co-authored the research paper with Korus. “Imaging pipelines that are optimized for forensics could help restore an element of trust in areas where the line between real and fake can be difficult to draw with confidence.”

The researchers will present their paper on “Content Authentication for Neural Imaging Pipelines: End-to-end Optimization of Photo Provenance in Complex Distribution Channels” at the Conference on Computer Vision and Pattern Recognition in June.

Article Topics

 |   |   | 

Latest Biometrics News

 

AI fakery is turning fear into a voter suppression tool ahead of US elections

In the months leading up to the 2026 midterm elections which could see Democrats sweeping both the House and Senate,…

 

Alcatraz partners with gun violence group on school, workplace safety

Alcatraz has joined the Active Shooter Prevention Project (ASPP), a U.S.-based initiative that develops strategies to reduce risks in schools,…

 

V-Key gets PE firm backing to expand mobile digital identity security footprint

Singapore-headquartered digital identity and Mobile Application Protection and Security (MAPS) provider V-Key has a new majority investor, with Tower Capital…

 

IDfy secures $52M to pursue digital ID trust services ambitions

Digital ID verification firm IDfy has obtained funding of 476 crore Indian rupees, approximately US$52 million, to pursue its digital…

 

WSO2 to help MOSIP’s passwordless authentication platform eSignet Go Thunder

IIIT-Bangalore, home to India’s burgeoning digital public goods efforts, has formed a partnership through the MOSIP initiative it hosts with…

 

Entrust face biometrics show major gains in NIST FRTE

A face biometrics algorithm submitted by Entrust to the NIST Face Recognition Technology Evaluation (FRTE) 1:1 Verification has made significant…

Comments

Leave a Reply

This site uses Akismet to reduce spam. Learn how your comment data is processed.

Biometric Market Analysis and Buyer's Guides

Most Viewed This Week

Featured Company

Biometrics Insight, Opinion

Digital ID In-Depth

Biometrics White Papers

Biometrics Events