论文标题
生成模型的人工指纹:在训练数据中生根深泡沫归因
Artificial Fingerprinting for Generative Models: Rooting Deepfake Attribution in Training Data
论文作者
论文摘要
由于生成的对抗网络(GAN)的突破,影像逼真的图像产生已经达到了新的质量水平。然而,这种深击的黑暗面,对产生的媒体的恶意使用,引起了人们对视觉错误信息的担忧。尽管有关深泡检测的现有研究工作表明了高准确性,但它仍会在检测对策技术方面的发电技术和对抗性迭代方面的进步。因此,我们通过将人工指纹引入模型来寻求一种积极主动且可持续的解决方案,这对生成模型的发展不可知。 我们的方法简单有效。我们首先将人工指纹嵌入到训练数据中,然后验证有关此类指纹从训练数据转移到生成模型的令人惊讶的发现,这又出现在生成的深击中。实验表明,我们的指纹解决方案(1)适用于各种尖端生成模型,(2)导致对生成质量的副作用可忽略不计,(3)对图像级别和模型级别的扰动保持强大基线。我们的解决方案关闭了发布预先培训的生成模型发明与可能的滥用之间的责任循环,这使其与当前的军备竞赛无关。代码和型号可在https://github.com/ningyu1991/artcoverganfingerprints上找到。
Photorealistic image generation has reached a new level of quality due to the breakthroughs of generative adversarial networks (GANs). Yet, the dark side of such deepfakes, the malicious use of generated media, raises concerns about visual misinformation. While existing research work on deepfake detection demonstrates high accuracy, it is subject to advances in generation techniques and adversarial iterations on detection countermeasure techniques. Thus, we seek a proactive and sustainable solution on deepfake detection, that is agnostic to the evolution of generative models, by introducing artificial fingerprints into the models. Our approach is simple and effective. We first embed artificial fingerprints into training data, then validate a surprising discovery on the transferability of such fingerprints from training data to generative models, which in turn appears in the generated deepfakes. Experiments show that our fingerprinting solution (1) holds for a variety of cutting-edge generative models, (2) leads to a negligible side effect on generation quality, (3) stays robust against image-level and model-level perturbations, (4) stays hard to be detected by adversaries, and (5) converts deepfake detection and attribution into trivial tasks and outperforms the recent state-of-the-art baselines. Our solution closes the responsibility loop between publishing pre-trained generative model inventions and their possible misuses, which makes it independent of the current arms race. Code and models are available at https://github.com/ningyu1991/ArtificialGANFingerprints .