Li Tang, Qingqing Ye, Haibo Hu, Qiao Xue, Yaxin Xiao, Jin Li
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引用次数: 0
摘要
随着DeepFake视频技术的快速发展,在视觉上识别它们变得越来越困难,对我们的社会构成了巨大的威胁。不幸的是,现有的检测方案仅限于利用DeepFake操纵留下的工件,因此它们很难跟上不断改进的DeepFake模型的步伐。在这项工作中,我们提出了DeepMark,一个可扩展和鲁棒的框架,用于检测DeepFakes。它将视频的基本视觉特征刻印到DeepMark Meta (DMM)中,并通过将提取的视觉特征与DMM中的ground truth进行比较来检测DeepFake的操作。因此,DeepMark是面向未来的,因为DeepFake视频必须旨在改变一些视觉特征,无论它看起来多么“自然”。此外,DMM还包含一个签名,用于验证上述特性的完整性。在特征及其签名的关键环节上附加纠错码并嵌入到视频水印中。为了提高DMM的创建效率,我们还提出了一种基于阈值的特征选择方案和一种推导的人脸检测方案。实验结果证明了DeepMark在不同数据集和参数设置下对DeepFake视频检测的有效性和高效性。
DeepMark: A Scalable and Robust Framework for DeepFake Video Detection
With the rapid growth of DeepFake video techniques, it becomes increasingly challenging to identify them visually, posing a huge threat to our society. Unfortunately, existing detection schemes are limited to exploiting the artifacts left by DeepFake manipulations, so they struggle to keep pace with the ever-improving DeepFake models. In this work, we propose DeepMark, a scalable and robust framework for detecting DeepFakes. It imprints essential visual features of a video into DeepMark Meta (DMM), and uses it to detect DeepFake manipulations by comparing the extracted visual features with the ground truth in DMM. Therefore, DeepMark is future-proof because a DeepFake video must aim to alter some visual feature, no matter how “natural” it looks. Furthermore, DMM also contains a signature for verifying the integrity of the above features. And an essential link to the features as well as their signature is attached with error correction codes and embedded in the video watermark. To improve the efficiency of DMM creation, we also present a threshold-based feature selection scheme and a deduced face detection scheme. Experimental results demonstrate the effectiveness and efficiency of DeepMark on DeepFake video detection under various datasets and parameter settings.
期刊介绍:
ACM Transactions on Privacy and Security (TOPS) (formerly known as TISSEC) publishes high-quality research results in the fields of information and system security and privacy. Studies addressing all aspects of these fields are welcomed, ranging from technologies, to systems and applications, to the crafting of policies.