Phoneme-Level Feature Discrepancies: A Key to Detecting Sophisticated Speech Deepfakes
- URL: http://arxiv.org/abs/2412.12619v1
- Date: Tue, 17 Dec 2024 07:31:19 GMT
- Title: Phoneme-Level Feature Discrepancies: A Key to Detecting Sophisticated Speech Deepfakes
- Authors: Kuiyuan Zhang, Zhongyun Hua, Rushi Lan, Yushu Zhang, Yifang Guo,
- Abstract summary: Phoneme features provide a powerful speech representation for deepfake detection.
We develop a new mechanism for detecting speech deepfakes by identifying the inconsistencies of phoneme-level speech features.
- Score: 13.218438914114019
- License:
- Abstract: Recent advancements in text-to-speech and speech conversion technologies have enabled the creation of highly convincing synthetic speech. While these innovations offer numerous practical benefits, they also cause significant security challenges when maliciously misused. Therefore, there is an urgent need to detect these synthetic speech signals. Phoneme features provide a powerful speech representation for deepfake detection. However, previous phoneme-based detection approaches typically focused on specific phonemes, overlooking temporal inconsistencies across the entire phoneme sequence. In this paper, we develop a new mechanism for detecting speech deepfakes by identifying the inconsistencies of phoneme-level speech features. We design an adaptive phoneme pooling technique that extracts sample-specific phoneme-level features from frame-level speech data. By applying this technique to features extracted by pre-trained audio models on previously unseen deepfake datasets, we demonstrate that deepfake samples often exhibit phoneme-level inconsistencies when compared to genuine speech. To further enhance detection accuracy, we propose a deepfake detector that uses a graph attention network to model the temporal dependencies of phoneme-level features. Additionally, we introduce a random phoneme substitution augmentation technique to increase feature diversity during training. Extensive experiments on four benchmark datasets demonstrate the superior performance of our method over existing state-of-the-art detection methods.
Related papers
- ExPO: Explainable Phonetic Trait-Oriented Network for Speaker Verification [48.98768967435808]
We use computational method to verify if an utterance matches the identity of an enrolled speaker.
Despite much success, we have yet to develop a speaker verification system that offers explainable results.
A novel approach, Explainable Phonetic Trait-Oriented (ExPO) network, is proposed in this paper to introduce the speaker's phonetic trait.
arXiv Detail & Related papers (2025-01-10T05:53:37Z) - Detecting the Undetectable: Assessing the Efficacy of Current Spoof Detection Methods Against Seamless Speech Edits [82.8859060022651]
We introduce the Speech INfilling Edit (SINE) dataset, created with Voicebox.
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.
arXiv Detail & Related papers (2025-01-07T14:17:47Z) - Training-Free Deepfake Voice Recognition by Leveraging Large-Scale Pre-Trained Models [52.04189118767758]
Generalization is a main issue for current audio deepfake detectors.
In this paper we study the potential of large-scale pre-trained models for audio deepfake detection.
arXiv Detail & Related papers (2024-05-03T15:27:11Z) - NPVForensics: Jointing Non-critical Phonemes and Visemes for Deepfake
Detection [50.33525966541906]
Existing multimodal detection methods capture audio-visual inconsistencies to expose Deepfake videos.
We propose a novel Deepfake detection method to mine the correlation between Non-critical Phonemes and Visemes, termed NPVForensics.
Our model can be easily adapted to the downstream Deepfake datasets with fine-tuning.
arXiv Detail & Related papers (2023-06-12T06:06:05Z) - Combining Automatic Speaker Verification and Prosody Analysis for
Synthetic Speech Detection [15.884911752869437]
We present a novel approach for synthetic speech detection, exploiting the combination of two high-level semantic properties of the human voice.
On one side, we focus on speaker identity cues and represent them as speaker embeddings extracted using a state-of-the-art method for the automatic speaker verification task.
On the other side, voice prosody, intended as variations in rhythm, pitch or accent in speech, is extracted through a specialized encoder.
arXiv Detail & Related papers (2022-10-31T11:03:03Z) - Deepfake audio detection by speaker verification [79.99653758293277]
We propose a new detection approach that leverages only the biometric characteristics of the speaker, with no reference to specific manipulations.
The proposed approach can be implemented based on off-the-shelf speaker verification tools.
We test several such solutions on three popular test sets, obtaining good performance, high generalization ability, and high robustness to audio impairment.
arXiv Detail & Related papers (2022-09-28T13:46:29Z) - Deep Learning for Hate Speech Detection: A Comparative Study [54.42226495344908]
We present here a large-scale empirical comparison of deep and shallow hate-speech detection methods.
Our goal is to illuminate progress in the area, and identify strengths and weaknesses in the current state-of-the-art.
In doing so we aim to provide guidance as to the use of hate-speech detection in practice, quantify the state-of-the-art, and identify future research directions.
arXiv Detail & Related papers (2022-02-19T03:48:20Z) - Phoneme Boundary Detection using Learnable Segmental Features [31.203969460341817]
Phoneme boundary detection plays an essential first step for a variety of speech processing applications.
We propose a neural architecture coupled with a parameterized structured loss function to learn segmental representations for the task of phoneme boundary detection.
arXiv Detail & Related papers (2020-02-11T14:03:08Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.