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Malacopula: adversarial automatic speaker verification attacks using a neural-based generalised Hammerstein model

Authors :
Todisco, Massimiliano
Panariello, Michele
Wang, Xin
Delgado, Héctor
Lee, Kong Aik
Evans, Nicholas
Publication Year :
2024

Abstract

We present Malacopula, a neural-based generalised Hammerstein model designed to introduce adversarial perturbations to spoofed speech utterances so that they better deceive automatic speaker verification (ASV) systems. Using non-linear processes to modify speech utterances, Malacopula enhances the effectiveness of spoofing attacks. The model comprises parallel branches of polynomial functions followed by linear time-invariant filters. The adversarial optimisation procedure acts to minimise the cosine distance between speaker embeddings extracted from spoofed and bona fide utterances. Experiments, performed using three recent ASV systems and the ASVspoof 2019 dataset, show that Malacopula increases vulnerabilities by a substantial margin. However, speech quality is reduced and attacks can be detected effectively under controlled conditions. The findings emphasise the need to identify new vulnerabilities and design defences to protect ASV systems from adversarial attacks in the wild.<br />Comment: Accepted at ASVspoof Workshop 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.09300
Document Type :
Working Paper