defense 2025

Multi-level SSL Feature Gating for Audio Deepfake Detection

Hoan My Tran 1, Damien Lolive 1, Aghilas Sini 2, Arnaud Delhay 1, Pierre-François Marteau 1, David Guennec 1

0 citations

α

Published on arXiv

2509.03409

Output Integrity Attack

OWASP ML Top 10 — ML09

Key Finding

Achieves state-of-the-art performance on in-domain ASVspoof benchmarks and generalizes robustly to out-of-domain multilingual datasets.

Multi-level SSL Feature Gating with MultiConv and CKA

Novel technique introduced


Recent advancements in generative AI, particularly in speech synthesis, have enabled the generation of highly natural-sounding synthetic speech that closely mimics human voices. While these innovations hold promise for applications like assistive technologies, they also pose significant risks, including misuse for fraudulent activities, identity theft, and security threats. Current research on spoofing detection countermeasures remains limited by generalization to unseen deepfake attacks and languages. To address this, we propose a gating mechanism extracting relevant feature from the speech foundation XLS-R model as a front-end feature extractor. For downstream back-end classifier, we employ Multi-kernel gated Convolution (MultiConv) to capture both local and global speech artifacts. Additionally, we introduce Centered Kernel Alignment (CKA) as a similarity metric to enforce diversity in learned features across different MultiConv layers. By integrating CKA with our gating mechanism, we hypothesize that each component helps improving the learning of distinct synthetic speech patterns. Experimental results demonstrate that our approach achieves state-of-the-art performance on in-domain benchmarks while generalizing robustly to out-of-domain datasets, including multilingual speech samples. This underscores its potential as a versatile solution for detecting evolving speech deepfake threats.


Key Contributions

  • Multi-level SSL feature gating mechanism over XLS-R layers to selectively extract relevant features for synthetic speech detection
  • Multi-kernel gated Convolution (MultiConv) back-end classifier capturing both local and global speech artifacts
  • Centered Kernel Alignment (CKA) as a diversity regularization objective to enforce distinct feature representations across MultiConv layers

🛡️ Threat Analysis

Output Integrity Attack

Proposes a novel AI-generated audio content detection architecture that identifies synthetic/deepfake speech. The contributions (multi-level SSL gating mechanism, MultiConv back-end, CKA diversity regularization) are architectural advances for detecting AI-generated content, qualifying as output integrity / content authenticity under ML09.


Details

Domains
audio
Model Types
transformercnn
Threat Tags
inference_time
Datasets
ASVspoof 2019ASVspoof 2021
Applications
audio deepfake detectionsynthetic speech detectionanti-spoofing for speaker verification