ASVspoof 2021: accelerating progress in spoofed and deepfake speech
detection
- URL: http://arxiv.org/abs/2109.00537v1
- Date: Wed, 1 Sep 2021 16:17:31 GMT
- Title: ASVspoof 2021: accelerating progress in spoofed and deepfake speech
detection
- Authors: Junichi Yamagishi, Xin Wang, Massimiliano Todisco, Md Sahidullah, Jose
Patino, Andreas Nautsch, Xuechen Liu, Kong Aik Lee, Tomi Kinnunen, Nicholas
Evans, H\'ector Delgado
- Abstract summary: ASVspoof 2021 is the forth edition in the series of bi-annual challenges which aim to promote the study of spoofing.
This paper describes all three tasks, the new databases for each of them, the evaluation metrics, four challenge baselines, the evaluation platform and a summary of challenge results.
- Score: 70.45884214674057
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: ASVspoof 2021 is the forth edition in the series of bi-annual challenges
which aim to promote the study of spoofing and the design of countermeasures to
protect automatic speaker verification systems from manipulation. In addition
to a continued focus upon logical and physical access tasks in which there are
a number of advances compared to previous editions, ASVspoof 2021 introduces a
new task involving deepfake speech detection. This paper describes all three
tasks, the new databases for each of them, the evaluation metrics, four
challenge baselines, the evaluation platform and a summary of challenge
results. Despite the introduction of channel and compression variability which
compound the difficulty, results for the logical access and deepfake tasks are
close to those from previous ASVspoof editions. Results for the physical access
task show the difficulty in detecting attacks in real, variable physical
spaces. With ASVspoof 2021 being the first edition for which participants were
not provided with any matched training or development data and with this
reflecting real conditions in which the nature of spoofed and deepfake speech
can never be predicated with confidence, the results are extremely encouraging
and demonstrate the substantial progress made in the field in recent years.
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