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Unmasking real-world audio deepfakes: A data-centric approach

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The growing prevalence of real-world deepfakes presents a critical challenge for existing detection systems, which are often evaluated on datasets collected just for scientific purposes. To address this gap, we introduce a novel dataset of real-world audio deepfakes. Our analysis reveals that these real-world examples pose significant challenges, even for the most performant detection models. Rather than increasing model complexity or exhaustively search for a better alternative, in this work we focus on a data-centric paradigm, employing strategies like dataset curation, pruning, and augmentation to improve model robustness and generalization. Through these methods, we achieve a 55% relative reduction in EER on the In-the-Wild dataset, reaching an absolute EER of 1.7%, and a 63% reduction on our newly proposed real-world deepfakes dataset, AI4T. These results highlight the transformative potential of data-centric approaches in enhancing deepfake detection for real-world applications. Code and data available at: https://github.com/davidcombei/AI4T.

David Combei, Adriana Stan, Dan Oneata, Nicolas M\"uller, Horia Cucu• 2025

Related benchmarks

TaskDatasetResultRank
Speech Spoofing DetectionIn-the-Wild (ITW) (eval)
EER1.7
19
Speech Anti-SpoofingAI4T
EER10.2
6
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