AdvSV: An Over-the-Air Adversarial Attack Dataset for Speaker Verification
It is known that deep neural networks are vulnerable to adversarial attacks. Although Automatic Speaker Verification (ASV) built on top of deep neural networks exhibits robust performance in controlled scenarios, many studies confirm that ASV is vulnerable to adversarial attacks. The lack of a stand...
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Zusammenfassung: | It is known that deep neural networks are vulnerable to adversarial attacks.
Although Automatic Speaker Verification (ASV) built on top of deep neural
networks exhibits robust performance in controlled scenarios, many studies
confirm that ASV is vulnerable to adversarial attacks. The lack of a standard
dataset is a bottleneck for further research, especially reproducible research.
In this study, we developed an open-source adversarial attack dataset for
speaker verification research. As an initial step, we focused on the
over-the-air attack. An over-the-air adversarial attack involves a perturbation
generation algorithm, a loudspeaker, a microphone, and an acoustic environment.
The variations in the recording configurations make it very challenging to
reproduce previous research. The AdvSV dataset is constructed using the
Voxceleb1 Verification test set as its foundation. This dataset employs
representative ASV models subjected to adversarial attacks and records
adversarial samples to simulate over-the-air attack settings. The scope of the
dataset can be easily extended to include more types of adversarial attacks.
The dataset will be released to the public under the CC BY-SA 4.0. In addition,
we also provide a detection baseline for reproducible research. |
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DOI: | 10.48550/arxiv.2310.05369 |