BUT Systems and Analyses for the ASVspoof 5 Challenge
Johan Rohdin
Lin Zhang
Oldřich Plchot
Vojtěch Staněk
David Mihola
Junyi Peng
Themos Stafylakis
Dmitriy Beveraki
Anna Silnova
Jan Brukner
Lukáš Burget

Abstract
This paper describes the BUT submitted systems for the ASVspoof 5 challenge, along with analyses. For the conventional deepfake detection task, we use ResNet18 and self-supervised models for the closed and open conditions, respectively. In addition, we analyze and visualize different combinations of speaker information and spoofing information as label schemes for training. For spoofing-robust automatic speaker verification (SASV), we introduce effective priors and propose using logistic regression to jointly train affine transformations of the countermeasure scores and the automatic speaker verification scores in such a way that the SASV LLR is optimized.
View on arXivComments on this paper