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Universal Adversarial Perturbations for Speech Recognition Systems

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arxiv 1905.03828 v2 pith:AWBP3KSJ submitted 2019-05-09 cs.LG cs.SDeess.ASstat.ML

Universal Adversarial Perturbations for Speech Recognition Systems

classification cs.LG cs.SDeess.ASstat.ML
keywords perturbationsspeechrecognitionuniversaladversarialaudiodemonstratesystem
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this work, we demonstrate the existence of universal adversarial audio perturbations that cause mis-transcription of audio signals by automatic speech recognition (ASR) systems. We propose an algorithm to find a single quasi-imperceptible perturbation, which when added to any arbitrary speech signal, will most likely fool the victim speech recognition model. Our experiments demonstrate the application of our proposed technique by crafting audio-agnostic universal perturbations for the state-of-the-art ASR system -- Mozilla DeepSpeech. Additionally, we show that such perturbations generalize to a significant extent across models that are not available during training, by performing a transferability test on a WaveNet based ASR system.

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