cs.AI updates on arXiv.org 10月01日
AI音频深度伪造检测新框架提升39%
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文章提出了一种新的数据创建和研究方法框架,针对当前深度伪造数据集和方法导致的系统无法推广到现实应用的问题,通过改进检测准确率,在更稳健和真实的实验室设置中提升了39%,在现实世界基准测试中提升了57%。

arXiv:2509.26471v1 Announce Type: cross Abstract: While the technologies empowering malicious audio deepfakes have dramatically evolved in recent years due to generative AI advances, the same cannot be said of global research into spoofing (deepfake) countermeasures. This paper highlights how current deepfake datasets and research methodologies led to systems that failed to generalize to real world application. The main reason is due to the difference between raw deepfake audio, and deepfake audio that has been presented through a communication channel, e.g. by phone. We propose a new framework for data creation and research methodology, allowing for the development of spoofing countermeasures that would be more effective in real-world scenarios. By following the guidelines outlined here we improved deepfake detection accuracy by 39% in more robust and realistic lab setups, and by 57% on a real-world benchmark. We also demonstrate how improvement in datasets would have a bigger impact on deepfake detection accuracy than the choice of larger SOTA models would over smaller models; that is, it would be more important for the scientific community to make greater investment on comprehensive data collection programs than to simply train larger models with higher computational demands.

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深度伪造检测 AI音频技术 数据集改进 模型性能提升
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