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Audio Deepfake Detection: What Has Been Achieved and What Lies Ahead

Bowen Zhang, Hui Cui, Van Nguyen, Monica T. Whitty

2025Sensors32 citationsDOIOpen Access PDF

Abstract

Advancements in audio synthesis and manipulation technologies have reshaped applications such as personalised virtual assistants, voice cloning for creative content, and language learning tools. However, the misuse of these technologies to create audio deepfakes has raised serious concerns about security, privacy, and trust. Studies reveal that human judgement of deepfake audio is not always reliable, highlighting the urgent need for robust detection technologies to mitigate these risks. This paper provides a comprehensive survey of recent advancements in audio deepfake detection, with a focus on cutting-edge developments in the past few years. It begins by exploring the foundational methods of audio deepfake generation, including text-to-speech (TTS) and voice conversion (VC), followed by a review of datasets driving progress in the field. The survey then delves into detection approaches, covering frontend feature extraction, backend classification models, and end-to-end systems. Additionally, emerging topics such as privacy-preserving detection, explainability, and fairness are discussed. Finally, this paper identifies key challenges and outlines future directions for developing robust and scalable audio deepfake detection systems.

Topics & Concepts

Computer scienceScalabilityField (mathematics)Data scienceJudgementKey (lock)Computer securityDatabaseMathematicsPolitical scienceLawPure mathematicsMusic and Audio ProcessingDigital Media Forensic DetectionSpeech and Audio Processing
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