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EnvSSLAM-FFN: Lightweight Layer-Fused System for ESDD 2026 Challenge

Xiaoxuan Guo
Hengyan Huang
Jiayi Zhou
Renhe Sun
Jian Liu
Haonan Cheng
Long Ye
Qin Zhang
Main:2 Pages
2 Figures
Bibliography:1 Pages
1 Tables
Abstract

Recent advances in generative audio models have enabled high-fidelity environmental sound synthesis, raising serious concerns for audio security. The ESDD 2026 Challenge therefore addresses environmental sound deepfake detection under unseen generators (Track 1) and black-box low-resource detection (Track 2) conditions. We propose EnvSSLAM-FFN, which integrates a frozen SSLAM self-supervised encoder with a lightweight FFN back-end. To effectively capture spoofing artifacts under severe data imbalance, we fuse intermediate SSLAM representations from layers 4-9 and adopt a class-weighted training objective. Experimental results show that the proposed system consistently outperforms the official baselines on both tracks, achieving Test Equal Error Rates (EERs) of 1.20% and 1.05%, respectively.

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