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Detecting the Undetectable: Assessing the Efficacy of Current Spoof Detection Methods Against Seamless Speech Edits

Authors :
Huang, Sung-Feng
Kuo, Heng-Cheng
Chen, Zhehuai
Yang, Xuesong
Yang, Chao-Han Huck
Tsao, Yu
Wang, Yu-Chiang Frank
Lee, Hung-yi
Fu, Szu-Wei
Publication Year :
2025

Abstract

Neural speech editing advancements have raised concerns about their misuse in spoofing attacks. Traditional partially edited speech corpora primarily focus on cut-and-paste edits, which, while maintaining speaker consistency, often introduce detectable discontinuities. Recent methods, like A\textsuperscript{3}T and Voicebox, improve transitions by leveraging contextual information. To foster spoofing detection research, we introduce the Speech INfilling Edit (SINE) dataset, created with Voicebox. We detailed the process of re-implementing Voicebox training and dataset creation. Subjective evaluations confirm that speech edited using this novel technique is more challenging to detect than conventional cut-and-paste methods. Despite human difficulty, experimental results demonstrate that self-supervised-based detectors can achieve remarkable performance in detection, localization, and generalization across different edit methods. The dataset and related models will be made publicly available.<br />Comment: SLT 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2501.03805
Document Type :
Working Paper