基于时间残差建模的大容量卷积视频隐写

Xinyu Weng, Yongzhi Li, Lu Chi, Yadong Mu
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引用次数: 55

摘要

隐写术是一种不引人注目地将秘密信息隐藏在一些封面数据中的技术。这项工作的关键范围是关于高容量视觉隐写技术,将一个全尺寸彩色视频隐藏在另一个视频中。我们通过经验验证了大容量图像隐写模型不会自然地扩展到视频情况,因为它完全忽略了连续视频帧内的时间冗余。我们的工作为这个问题提出了一个新颖的解决方案。(将一个视频隐藏到另一个视频中)。技术贡献有两个方面:首先,由于两个连续帧之间的残差是高度稀疏的,我们建议明确考虑帧间残差。具体来说,我们的模型包含两个分支,其中一个分支专门用于将帧间残差隐藏到覆盖视频帧中,另一个分支用于隐藏原始秘密帧。然后设计了两个解码器,分别显示残差或帧。其次,我们开发了基于深度卷积神经网络的模型,这在视频隐写的文献中是第一个。在实验中,将我们的模型与经典隐写方法和纯大容量图像隐写模型进行了综合评价。所有结果都有力地表明,所提出的模型比以前的方法具有优势。我们还仔细研究了该模型对隐写分析器的安全性和对视频压缩的鲁棒性。
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High-Capacity Convolutional Video Steganography with Temporal Residual Modeling
Steganography represents the art of unobtrusively concealing a secret message within some cover data. The key scope of this work is about high-capacity visual steganography techniques that hide a full-sized color video within another. We empirically validate that high-capacity image steganography model doesn't naturally extend to the video case for it completely ignores the temporal redundancy within consecutive video frames. Our work proposes a novel solution to this problem(i.e., hiding a video into another video). The technical contributions are two-fold: first, motivated by the fact that the residual between two consecutive frames is highly-sparse, we propose to explicitly consider inter-frame residuals. Specifically, our model contains two branches, one of which is specially designed for hiding inter-frame residual into a cover video frame and the other hides the original secret frame. And then two decoders are devised, revealing residual or frame respectively. Secondly, we develop the model based on deep convolutional neural networks, which is the first of its kind in the literature of video steganography. In experiments, comprehensive evaluations are conducted to compare our model with classic steganography methods and pure high-capacity image steganography models. All results strongly suggest that the proposed model enjoys advantages over previous methods. We also carefully investigate our model's security to steganalyzer and the robustness to video compression.
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