ASASVIcomtech: The Vicomtech-UGR Speech Deepfake Detection and SASV Systems for the ASVspoof5 Challenge
This paper presents the work carried out by the ASASVIcomtech team, made up of researchers from Vicomtech and University of Granada, for the ASVspoof5 Challenge. The team has participated in both Track 1 (speech deepfake detection) and Track 2 (spoofing-aware speaker verification). This work started...
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Zusammenfassung: | This paper presents the work carried out by the ASASVIcomtech team, made up
of researchers from Vicomtech and University of Granada, for the ASVspoof5
Challenge. The team has participated in both Track 1 (speech deepfake
detection) and Track 2 (spoofing-aware speaker verification). This work started
with an analysis of the challenge available data, which was regarded as an
essential step to avoid later potential biases of the trained models, and whose
main conclusions are presented here. With respect to the proposed approaches, a
closed-condition system employing a deep complex convolutional recurrent
architecture was developed for Track 1, although, unfortunately, no noteworthy
results were achieved. On the other hand, different possibilities of
open-condition systems, based on leveraging self-supervised models, augmented
training data from previous challenges, and novel vocoders, were explored for
both tracks, finally achieving very competitive results with an ensemble
system. |
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DOI: | 10.48550/arxiv.2408.10361 |