SDCVASApr 24, 2022

Dictionary Attacks on Speaker Verification

arXiv:2204.11304v212 citationsh-index: 73
Originality Highly original
AI Analysis

This exposes a critical vulnerability in speaker verification systems, posing a security threat for applications relying on voice authentication.

The paper tackles the security of speaker verification systems by introducing dictionary attacks that use adversarial optimization to create master voices, which successfully match an average of 69% of females and 38% of males at a 1% false alarm rate.

In this paper, we propose dictionary attacks against speaker verification - a novel attack vector that aims to match a large fraction of speaker population by chance. We introduce a generic formulation of the attack that can be used with various speech representations and threat models. The attacker uses adversarial optimization to maximize raw similarity of speaker embeddings between a seed speech sample and a proxy population. The resulting master voice successfully matches a non-trivial fraction of people in an unknown population. Adversarial waveforms obtained with our approach can match on average 69% of females and 38% of males enrolled in the target system at a strict decision threshold calibrated to yield false alarm rate of 1%. By using the attack with a black-box voice cloning system, we obtain master voices that are effective in the most challenging conditions and transferable between speaker encoders. We also show that, combined with multiple attempts, this attack opens even more to serious issues on the security of these systems.

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