Private Iris Recognition with High-Performance FHE
Jincheol Ha, Guillaume Hanrot, Taeyeong Noh, Jung Hee Cheon, Jung Woo Kim, Damien Stehl\'e

TL;DR
This paper presents a privacy-preserving iris recognition method using Threshold Fully Homomorphic Encryption, achieving faster matching times and enhanced security features compared to previous secret-sharing approaches, suitable for large-scale biometric databases.
Contribution
The work introduces a ThFHE-based solution for iris recognition that offers active security, no trusted setup, and improved performance over prior secret-sharing methods.
Findings
Matching 32 eyes against 7*2^14 iris codes in 1.8 seconds
Uses 8 RTX-5090 GPUs for computation
Reduces ciphertext processing through a novel technique
Abstract
Among biometric verification systems, irises stand out because they offer high accuracy even in large-scale databases. For example, the World ID project aims to provide authentication to all humans via iris recognition, with millions already registered. Storing such biometric data raises privacy concerns, which can be addressed using privacy-enhancing techniques. Bloemen et al. describe a solution based on 2-out-of-3 Secret-Sharing Multiparty Computation (SS-MPC), for the World ID setup. In terms of security, unless an adversary corrupts 2~servers, the iris codes remain confidential and nothing leaks beyond the result of the computation. Their solution is able to match~ users against a database of~ iris codes in~s , using~24 H100 GPUs, more than 40~communication rounds and GB/party of data transferred (the timing assumes a network speed above~3Tb/s). In…
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Taxonomy
TopicsCryptography and Data Security · Biometric Identification and Security · Privacy-Preserving Technologies in Data
