Audio deepfake detection has recently garnered public concern due to its implications for security and reliability. Traditional deep learning methods have been widely applied to this task but often lack generalisability when confronted with newly emerging spoofing techniques and more tasks such as spoof attribution recognition rather than simple binary classification. In principle, Large Language Models (LLMs) are considered to possess the needed generalisation capabilities. However, previous research on Audio LLMs (ALLMs) indicates a generalization bottleneck in audio deepfake detection performance, even when sufficient data is available. Consequently, this study investigates the model architecture and examines the effects of the primary components of ALLMs, namely the audio encoder and the text-based LLM. Our experiments demonstrate that the careful selection and combination of audio encoders and text-based LLMs are crucial for unlocking the deepfake detection potential of ALLMs. We further propose an ALLM structure capable of generalizing deepfake detection abilities to out-of-domain spoofing tests and other deepfake tasks, such as spoof positioning and spoof attribution recognition. Our proposed model architecture achieves state-of-the-art (SOTA) performance across multiple datasets, including ASVSpoof2019, InTheWild, and Demopage, with accuracy reaching up to 95.76% on average, and exhibits competitive capabilities in other deepfake detection tasks such as attribution, and localisation compared to SOTA audio understanding models. Data and codes are provided in supplementary materials.
翻译:音频深度伪造检测因其对安全性和可靠性的影响,近来受到公众广泛关注。传统深度学习方法已广泛应用于此任务,但在面对新出现的欺骗技术以及更复杂的任务(如欺骗来源识别而非简单的二元分类)时,往往缺乏泛化能力。原则上,大语言模型被认为具备所需的泛化能力。然而,先前关于音频大语言模型的研究表明,即使在数据充足的情况下,其在音频深度伪造检测性能上仍存在泛化瓶颈。因此,本研究深入探讨了模型架构,并分析了音频大语言模型主要组件——音频编码器和基于文本的大语言模型——的影响。实验表明,精心选择和组合音频编码器与基于文本的大语言模型对于释放音频大语言模型的深度伪造检测潜力至关重要。我们进一步提出了一种音频大语言模型结构,能够将深度伪造检测能力泛化至域外欺骗测试以及其他深度伪造任务,如欺骗定位和欺骗来源识别。所提出的模型架构在多个数据集(包括ASVSpoof2019、InTheWild和Demopage)上实现了最先进的性能,平均准确率高达95.76%,并在其他深度伪造检测任务(如来源识别和定位)中,与最先进的音频理解模型相比展现出竞争力。数据和代码已在补充材料中提供。