Digital images are vulnerable to nefarious tampering attacks such as content addition or removal that severely alter the original meaning. It is somehow like a person without protection that is open to various kinds of viruses. Image immunization (Imuge) is a technology of protecting the images by introducing trivial perturbation, so that the protected images are immune to the viruses in that the tampered contents can be auto-recovered. This paper presents Imuge+, an enhanced scheme for image immunization. By observing the invertible relationship between image immunization and the corresponding self-recovery, we employ an invertible neural network to jointly learn image immunization and recovery respectively in the forward and backward pass. We also introduce an efficient attack layer that involves both malicious tamper and benign image post-processing, where a novel distillation-based JPEG simulator is proposed for improved JPEG robustness. Our method achieves promising results in real-world tests where experiments show accurate tamper localization as well as high-fidelity content recovery. Additionally, we show superior performance on tamper localization compared to state-of-the-art schemes based on passive forensics.
翻译:图像免疫(Imuge)是一种通过引入轻微扰动来保护图像的技术,这样受保护的图像可以不受病毒影响,因为被篡改的内装物可以自动回收。本文展示了一个强化的图像免疫计划Imuge+。通过观察图像免疫与相应自我恢复之间的不可忽视的关系,我们使用一个不可忽略的神经网络,共同学习前向和后向的图像免疫和复原。我们还引入一个高效攻击层,其中既包括恶意破坏,也包括良性图像处理后处理,其中提出了一个新的基于蒸馏的JPEG JPEG模拟器,用于改进JPEG的稳健性。我们的方法在现实世界试验中取得了令人振奋的结果,实验显示准确篡改本地化以及高真知性内容恢复。此外,我们展示了与基于被动法证的状态计划相比,篡改本地化方面的优异性表现。