English

LRPD: Large Replay Parallel Dataset

Audio and Speech Processing 2023-10-02 v1 Sound

Abstract

The latest research in the field of voice anti-spoofing (VAS) shows that deep neural networks (DNN) outperform classic approaches like GMM in the task of presentation attack detection. However, DNNs require a lot of data to converge, and still lack generalization ability. In order to foster the progress of neural network systems, we introduce a Large Replay Parallel Dataset (LRPD) aimed for a detection of replay attacks. LRPD contains more than 1M utterances collected by 19 recording devices in 17 various environments. We also provide an example training pipeline in PyTorch [1] and a baseline system, that achieves 0.28% Equal Error Rate (EER) on evaluation subset of LRPD and 11.91% EER on publicly available ASVpoof 2017 [2] eval set. These results show that model trained with LRPD dataset has a consistent performance on the fully unknown conditions. Our dataset is free for research purposes and hosted on GDrive. Baseline code and pre-trained models are available at GitHub.

Keywords

Cite

@article{arxiv.2309.17298,
  title  = {LRPD: Large Replay Parallel Dataset},
  author = {Ivan Yakovlev and Mikhail Melnikov and Nikita Bukhal and Rostislav Makarov and Alexander Alenin and Nikita Torgashov and Anton Okhotnikov},
  journal= {arXiv preprint arXiv:2309.17298},
  year   = {2023}
}
R2 v1 2026-06-28T12:36:14.121Z