How to generate keys from facial images and keep privacy at the same time (2018) [pdf]

by legionof7on 4/26/2020, 10:18 PMwith 7 comments

by nullcon 4/27/2020, 8:25 AM

The minisketch library I worked on can be used for near optimal (in the sense of information leak) error correction for "set like" features:

https://github.com/sipa/minisketch/

Our application is for communications efficient set reconciliation to convert Bitcoin's quadratic-overhead transaction gossip protocol (O(txn*peers)) to effectively linear (O(txn)), though the primary academic work that our work was based on were concerned with fuzzy extractors for privacy preserving (and encryption key generating) biometrics.

by O81s1iiCHUP9on 4/26/2020, 11:53 PM

Hmm...

This is old research, which seems to be a recreation of the work of Sutcu et al. among others.

I did my masters thesis on this.

by barbegalon 4/27/2020, 10:09 AM

I feel like the ability for this method to work well depends on the methodology of taking the enrollment and the subsequent key-generation images. If you take them using the same poses, with the same camera and lighting within a few hours of each other then this method will work extremely well [1]. I really doubt it generalizes to the case of using it with a laptop webcam in any location with different lighting.

But maybe I am wrong, maybe there are enough bits of information in a randomly lit image of a face.

[1] https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2898524/

by 1cvmaskon 4/26/2020, 11:33 PM

Has IBM built a product around this? I don’t know of one.

Or is the research for patent purposes only?

by WorldPeason 4/27/2020, 3:59 PM

Someone at the University of Haifa has a sense of humor