Cross-Domain Local Characteristic Enhanced Deepfake Video Detection

Zihan Liu, Hanyi Wang, Shilin Wang
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引用次数: 2

Abstract

As ultra-realistic face forgery techniques emerge, deepfake detection has attracted increasing attention due to security concerns. Many detectors cannot achieve accurate results when detecting unseen manipulations despite excellent performance on known forgeries. In this paper, we are motivated by the observation that the discrepancies between real and fake videos are extremely subtle and localized, and inconsistencies or irregularities can exist in some critical facial regions across various information domains. To this end, we propose a novel pipeline, Cross-Domain Local Forensics (XDLF), for more general deepfake video detection. In the proposed pipeline, a specialized framework is presented to simultaneously exploit local forgery patterns from space, frequency, and time domains, thus learning cross-domain features to detect forgeries. Moreover, the framework leverages four high-level forgery-sensitive local regions of a human face to guide the model to enhance subtle artifacts and localize potential anomalies. Extensive experiments on several benchmark datasets demonstrate the impressive performance of our method, and we achieve superiority over several state-of-the-art methods on cross-dataset generalization. We also examined the factors that contribute to its performance through ablations, which suggests that exploiting cross-domain local characteristics is a noteworthy direction for developing more general deepfake detectors.
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跨域局部特征增强深度假视频检测
随着超逼真人脸伪造技术的出现,出于安全考虑,深度伪造检测越来越受到人们的关注。许多检测器在检测未见的操作时无法获得准确的结果,尽管在已知的伪造品上表现出色。在本文中,我们的动机是观察到真实和虚假视频之间的差异是非常微妙和局部的,并且在不同信息域的一些关键面部区域可能存在不一致或不规则性。为此,我们提出了一种新的管道,跨域本地取证(XDLF),用于更通用的深度假视频检测。在该管道中,提出了一个专门的框架来同时利用空间、频率和时间域的本地伪造模式,从而学习跨域特征来检测伪造。此外,该框架利用人脸的四个高级伪造敏感局部区域来指导模型增强细微的工件并定位潜在的异常。在几个基准数据集上的大量实验证明了我们的方法的令人印象深刻的性能,并且我们在跨数据集泛化方面取得了优于几种最先进方法的优势。我们还通过烧蚀研究了影响其性能的因素,这表明利用跨域局部特征是开发更通用的深度假探测器的一个值得注意的方向。
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