The performance of speech spoofing detection often varies across different training and evaluation corpora. Leveraging multiple corpora typically enhances robustness and performance in fields like speaker recognition and speech recognition. However, our spoofing detection experiments show that multi-corpus training does not consistently improve performance and may even degrade it. We hypothesize that datasetspecific biases impair generalization, leading to performance instability. To address this, we propose an Invariant Domain Feature Extraction (IDFE) framework, employing multi-task learning and a gradient reversal layer to minimize corpusspecific information in learned embeddings. The IDFE framework reduces the average equal error rate by 20% compared to the baseline, assessed across four varied datasets.
Enhancing multi-corpus training in SSL-based anti-spoofing models: domain-invariant feature extraction
IWBF 2026, 14th International Workshop on Biometrics and Forensics, 23-24 April 2026, EURECOM, Biot, France
Type:
Conférence
Date:
2026-04-23
Department:
Sécurité numérique
Eurecom Ref:
8678
Copyright:
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PERMALINK : https://www.eurecom.fr/publication/8678