ASCLSPFeb 3

WST-X Series: Wavelet Scattering Transform for Interpretable Speech Deepfake Detection

arXiv:2602.02980v12 citationsh-index: 2
Originality Incremental advance
AI Analysis

This addresses the need for interpretable and high-performing speech deepfake detection, though it appears incremental by combining existing techniques.

The paper tackled the problem of speech deepfake detection by proposing the WST-X series feature extractor, which outperformed existing front-ends on the Deepfake-Eval-2024 dataset.

Designing front-ends for speech deepfake detectors primarily focuses on two categories. Hand-crafted filterbank features are transparent but are limited in capturing high-level semantic details, often resulting in performance gaps compared to self-supervised (SSL) features. SSL features, in turn, lack interpretability and may overlook fine-grained spectral anomalies. We propose the WST-X series, a novel family of feature extractors that combines the best of both worlds via the wavelet scattering transform (WST), integrating wavelets with nonlinearities analogous to deep convolutional networks. We investigate 1D and 2D WSTs to extract acoustic details and higher-order structural anomalies, respectively. Experimental results on the recent and challenging Deepfake-Eval-2024 dataset indicate that WST-X outperforms existing front-ends by a wide margin. Our analysis reveals that a small averaging scale ($J$), combined with high-frequency and directional resolutions ($Q, L$), is critical for capturing subtle artifacts. This underscores the value of translation-invariant and deformation-stable features for robust and interpretable speech deepfake detection.

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