Deep Generative Variational Autoencoding For Replay Spoof Detection In Automatic Speaker Verification
2020 Β· Bhusan Chettri, Tomi Kinnunen, Emmanouil Benetos
Abstract
Automatic speaker verification (ASV) systems are highly vulnerable to presentation attacks, also called spoofing attacks. Replay is among the simplest attacks to mount - yet difficult to detect reliably. The generalization failure of spoofing countermeasures (CMs) has driven the community to study various alternative deep learning CMs. The majority of them are supervised approaches that learn a human-spoof discriminator. In this paper, we advocate a different, deep generative approach that leverages from powerful unsupervised manifold learning in classification. The potential benefits include the possibility to sample new data, and to obtain insights to the latent features of genuine and spoofed speech. To this end, we propose to use variational autoencoders (VAEs) as an alternative backend for replay attack detection, via three alternative models that differ in their class-conditioning. The first one, similar to the use of Gaussian mixture models (GMMs) in spoof detection, is to train
Authors
(none)
Tags
Stats
Related papers
- Generalizing Speaker Verification For Spoof Awareness In The Embedding Space (2024)7.16
- Transforming Acoustic Characteristics To Deceive Playback Spoofing Countermeasures Of Speaker Verification Systems (2018)6.34
- Replay Spoofing Countermeasure Using Autoencoder And Siamese Network On Asvspoof 2019 Challenge (2019)10.21
- Toward Improving Synthetic Audio Spoofing Detection Robustness Via Meta-learning And Disentangled Training With Adversarial Examples (2024)6.77
- Automatic Speaker Verification Spoofing And Deepfake Detection Using Wav2vec 2.0 And Data Augmentation (2022)17.35
- A Study On Convolutional Neural Network Based End-to-end Replay Anti-spoofing (2018)0.00
- Audio-replay Attack Detection Countermeasures (2017)6.34
- Securing Voice Biometrics: One-shot Learning Approach For Audio Deepfake Detection (2023)9.03