Authors
Juan Ramón Troncoso-Pastoriza, Daniel González-Jiménez, Fernando Pérez-González
Publication date
2013/5/13
Journal
IEEE Transactions on Information Forensics and Security
Volume
8
Issue
7
Pages
1101-1114
Publisher
IEEE
Description
Face recognition is one of the foremost applications in computer vision, which often involves sensitive signals; privacy concerns have been raised lately and tackled by several recent privacy-preserving face recognition approaches. Those systems either take advantage of information derived from the database templates or require several interaction rounds between client and server, so they cannot address outsourced scenarios. We present a private face verification system that can be executed in the server without interaction, working with encrypted feature vectors for both the templates and the probe face. We achieve this by combining two significant contributions: 1) a novel feature model for Gabor coefficients' magnitude driving a Lloyd-Max quantizer, used for reducing plaintext cardinality with no impact on performance; 2) an extension of a quasi-fully homomorphic encryption able to compute, without interaction …
Total citations
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Scholar articles
JR Troncoso-Pastoriza, D González-Jiménez… - IEEE Transactions on Information Forensics and …, 2013