ASSDFeb 18, 2019

Securing Voice-driven Interfaces against Fake (Cloned) Audio Attacks

arXiv:1902.06782v128 citations
Originality Incremental advance
AI Analysis

This addresses security threats for voice-driven interfaces and speech-based access control systems, but it is incremental as it builds on existing detection techniques.

The paper tackles the problem of detecting fake (cloned) audio attacks on voice-driven interfaces by proposing a method that uses higher-order spectral analysis to capture artifacts left by generative models, achieving a near-perfect detection rate on a dataset with 126 cloned and 8 bona-fide speech samples.

Voice cloning technologies have found applications in a variety of areas ranging from personalized speech interfaces to advertisement, robotics, and so on. Existing voice cloning systems are capable of learning speaker characteristics and use trained models to synthesize a person's voice from only a few audio samples. Advances in cloned speech generation technologies are capable of generating perceptually indistinguishable speech from a bona-fide speech. These advances pose new security and privacy threats to voice-driven interfaces and speech-based access control systems. The state-of-the-art speech synthesis technologies use trained or tuned generative models for cloned speech generation. Trained generative models rely on linear operations, learned weights, and excitation source for cloned speech synthesis. These systems leave characteristic artifacts in the synthesized speech. Higher-order spectral analysis is used to capture differentiating attributes between bona-fide and cloned audios. Specifically, quadrature phase coupling (QPC) in the estimated bicoherence, Gaussianity test statistics, and linearity test statistics are used to capture generative model artifacts. Performance of the proposed method is evaluated on cloned audios generated using speaker adaptation- and speaker encoding-based approaches. Experimental results for a dataset consisting of 126 cloned speech and 8 bona-fide speech samples indicate that the proposed method is capable of detecting bona-fide and cloned audios with close to a perfect detection rate.

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