With the advance in user-friendly and powerful video editing tools, anyone can easily manipulate videos without leaving prominent visual traces. Frame-rate up-conversion (FRUC), a representative temporal-domain operation, increases the motion continuity of videos with a lower frame-rate and is used by malicious counterfeiters in video tampering such as generating fake frame-rate video without improving the quality or mixing temporally spliced videos. FRUC is based on frame interpolation schemes and subtle artifacts that remain in interpolated frames are often difficult to distinguish. Hence, detecting such forgery traces is a critical issue in video forensics. This paper proposes a frame-rate conversion detection network (FCDNet) that learns forensic features caused by FRUC in an end-to-end fashion. The proposed network uses a stack of consecutive frames as the input and effectively learns interpolation artifacts using network blocks to learn spatiotemporal features. This study is the first attempt to apply a neural network to the detection of FRUC. Moreover, it can cover the following three types of frame interpolation schemes: nearest neighbor interpolation, bilinear interpolation, and motion-compensated interpolation. In contrast to existing methods that exploit all frames to verify integrity, the proposed approach achieves a high detection speed because it observes only six frames to test its authenticity. Extensive experiments were conducted with conventional forensic methods and neural networks for video forensic tasks to validate our research. The proposed network achieved state-of-the-art performance in terms of detecting the interpolated artifacts of FRUC. The experimental results also demonstrate that our trained model is robust for an unseen dataset, unlearned frame-rate, and unlearned quality factor.
翻译:随着用户友好和强大的视频编辑工具的进步,任何人都可以轻松地操作视频,而不会留下突出的视觉痕迹。 框架节率上调(FRUC)是一个具有代表性的时间-域域操作,提高视频运动的连续性,降低框架速率,并被恶意伪造者用于视频篡改,例如制作假框架速率视频,而没有提高质量或混合时间分解视频。 FRUC基于框架的内插图和留在内插框架中的微妙艺术品,往往难以区分。 因此,在视频法证中发现此类伪造痕迹是一个关键问题。 本文提出一个框架- 率转换检测网络(FCDNet), 以端到端的方式学习由FRUC带来的法证特征。 拟议网络使用一系列连续框架作为输入,并有效地学习内插图, 使用网络块来学习波纹的特征。 这项研究是首次尝试将内插模型网络用于探测FRUC。 此外,它还可以覆盖以下三种类型的框架内插系统内部测图案: 近邻的内调、 双线内置的内译内部测网间测(FCDNet) 内部测测测测测测算, 其内部测算的内测算的六度上的内化方法是用来测量测算,, 进行所有的测算的内径测算。