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There is more than one kind of robustness: Fooling Whisper with adversarial examples

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Whisper is a recent Automatic Speech Recognition (ASR) model displaying impressive robustness to both out-of-distribution inputs and random noise. In this work, we show that this robustness does not carry over to adversarial noise. We show that we can degrade Whisper performance dramatically, or even transcribe a target sentence of our choice, by generating very small input perturbations with Signal Noise Ratio of 35-45dB. We also show that by fooling the Whisper language detector we can very easily degrade the performance of multilingual models. These vulnerabilities of a widely popular open-source model have practical security implications and emphasize the need for adversarially robust ASR.

Raphael Olivier, Bhiksha Raj• 2022

Related benchmarks

TaskDatasetResultRank
Speech RecognitionLibriSpeech (test)
WER0.4793
59
Automatic Speech RecognitionLibriSpeech
WER33.33
35
Automatic Speech RecognitionLJ-Speech
WER26.54
35
Speech RecognitionLJ Speech (test)
WER42.87
35
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