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High-Frequency Adversarial Defense For Speech And Audio

Raphael Olivier, Bhiksha Raj, Muhammad Shah

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    Length: 00:09:27
08 Jun 2021

Recent work suggests that adversarial examples are enabled by high-frequency components in the dataset. In the speech domain where spectrograms are used extensively, masking those components seems like a sound direction for defenses against attacks. We explore a smoothing approach based on additive noise masking in priority high frequencies. We show that this approach is much more robust than the naive noise filtering approach, and a promising research direction. We successfully apply our defense on a Librispeech speaker identification task, and on the UrbanSound8K audio classification dataset.

Chairs:
Ritwik Giri