SDAIASJan 11, 2025

Neural Codec Source Tracing: Toward Comprehensive Attribution in Open-Set Condition

arXiv:2501.06514v114 citationsh-index: 25Has Code
Originality Incremental advance
AI Analysis

This work addresses the challenge of attributing audio deepfakes to specific sources in realistic open-set scenarios, which is incremental as it extends existing closed-set source tracing to include open-set conditions.

The paper tackles the problem of audio deepfake source tracing in open-set conditions by defining the Neural Codec Source Tracing (NCST) task and constructing the ST-Codecfake dataset with 11 neural codec methods. The results show that NCST models perform well in in-distribution classification and out-of-distribution detection but lack robustness in classifying unseen real audio.

Current research in audio deepfake detection is gradually transitioning from binary classification to multi-class tasks, referred as audio deepfake source tracing task. However, existing studies on source tracing consider only closed-set scenarios and have not considered the challenges posed by open-set conditions. In this paper, we define the Neural Codec Source Tracing (NCST) task, which is capable of performing open-set neural codec classification and interpretable ALM detection. Specifically, we constructed the ST-Codecfake dataset for the NCST task, which includes bilingual audio samples generated by 11 state-of-the-art neural codec methods and ALM-based out-ofdistribution (OOD) test samples. Furthermore, we establish a comprehensive source tracing benchmark to assess NCST models in open-set conditions. The experimental results reveal that although the NCST models perform well in in-distribution (ID) classification and OOD detection, they lack robustness in classifying unseen real audio. The ST-codecfake dataset and code are available.

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