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arxiv 2509.08476 v1 pith:DIMFOG4L submitted 2025-09-10 eess.AS

Audio Deepfake Verification

classification eess.AS
keywords deepfakeaudioverificationachievearchitectureauditydual-branchsource
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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With the rapid development of deepfake technology, simply making a binary judgment of true or false on audio is no longer sufficient to meet practical needs. Accurately determining the specific deepfake method has become crucial. This paper introduces the Audio Deepfake Verification (ADV) task, effectively addressing the limitations of existing deepfake source tracing methods in closed-set scenarios, aiming to achieve open-set deepfake source tracing. Meanwhile, the Audity dual-branch architecture is proposed, extracting deepfake features from two dimensions: audio structure and generation artifacts. Experimental results show that the dual-branch Audity architecture outperforms any single-branch configuration, and it can simultaneously achieve excellent performance in both deepfake detection and verification tasks.

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  1. If It's Good Enough for You, It's Good Enough for Me: Transferability of Audio Sufficiencies across Models

    cs.SD 2026-04 unverdicted novelty 7.0

    Transferability analysis finds that minimal sufficient signals transfer across audio models at rates varying by task, around 26% for music genre classification, with some deepfake models showing distinct behaviors not...