With the spread of tampered images, locating the tampered regions in digital images has drawn increasing attention. The existing image tampering localization methods, however, suffer from severe performance degradation when the tampered images are subjected to some post-processing, as the tampering traces would be distorted by the post-processing operations. The poor robustness against post-processing has become a bottleneck for the practical applications of image tampering localization techniques. In order to address this issue, this paper proposes a novel restoration-assisted framework for image tampering localization (ReLoc). The ReLoc framework mainly consists of an image restoration module and a tampering localization module. The key idea of ReLoc is to use the restoration module to recover a high-quality counterpart of the distorted tampered image, such that the distorted tampering traces can be re-enhanced, facilitating the tampering localization module to identify the tampered regions. To achieve this, the restoration module is optimized not only with the conventional constraints on image visual quality but also with a forensics-oriented objective function. Furthermore, the restoration module and the localization module are trained alternately, which can stabilize the training process and is beneficial for improving the performance. The proposed framework is evaluated by fighting against JPEG compression, the most commonly used post-processing. Extensive experimental results show that ReLoc can significantly improve the robustness against JPEG compression. The restoration module in a well-trained ReLoc model is transferable. Namely, it is still effective when being directly deployed with another tampering localization module.
翻译:随着被篡改的图像的传播,在数字图像中定位被篡改的区域已引起越来越多的注意;然而,当被篡改的图像受到某些后处理,由于被篡改的图像会被扭曲,因此现有篡改的地方化方法会发生严重的性能退化;随着被篡改的图像的传播,对后处理的不强力已成为对图像篡改地方化技术实际应用的瓶颈;为了解决这一问题,本文件提议建立一个新的修复辅助框架,以篡改图像的本地化(ReLoc);ReLoc框架主要包括一个图像恢复模块和一个被篡改的地方化模块。 ReLoc的关键想法是利用修复模块来恢复被篡改的图像的高质量对应方,使被篡改的痕迹能够重新增强,从而便利对被篡改的区域进行篡改的地方化技术的改造模块。为了实现这一目标,恢复模块的优化不仅是对图像稳妥的视觉质量的常规限制,而且还包括以法证为导向的客观功能。 此外,恢复模块和本地化模块是经过交替训练的,为了恢复被篡改的对扭曲的图像的图像,因此,在进行最有益的后再压缩的升级的模型是用来评估。