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Digital video steganalysis by subtractive prediction error adjacency matrix

机译:基于减法预测误差邻接矩阵的数字视频隐写分析

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摘要

Video has become an important cover for steganography for its large volume. There are two main categories among existing methods for detecting steganography which embeds in the spatial domain of videos. One category focuses on the spatial redundancy and the other one mainly focuses on the temporal redundancy. This paper presents a novel method which considers both the spatial and the temporal redundancy for video steganalysis. Firstly, model of spread spectrum steganography is provided. PEF (Prediction Error Frame) is then chosen to suppress the temporal redundancy of the video content. Differential filtering between adjacent samples in PEFs is employed to further suppress the spatial redundancy. Finally, Dependencies between adjacent samples in a PEF are modeled by a first-order Markov chain, and subsets of the empirical matrices are then employed as features for a steganalyzer with classifier of SVM (Support Vector Machine). Experimental results demonstrate that for uncompressed videos, the novel features perform better than previous video steganalytic works, and similar to the well-known SPAM (Subtractive Pixel Adjacency Model) features which are originally designed for image steganalysis. For videos compressed with distortion, the novel features perform better than other features tested.
机译:视频已经成为隐写术的重要封面。在现有的用于检测隐写术的方法中,主要有两类,它们嵌入在视频的空间域中。一类关注空间冗余,另一类关注时间冗余。本文提出了一种新颖的方法,该方法同时考虑了视频隐写分析的空间和时间冗余。首先,提供了扩频隐写术的模型。然后选择PEF(预测错误帧)以抑制视频内容的时间冗余。 PEF中相邻样本之间的差分滤波被用来进一步抑制空间冗余。最后,通过一阶马尔可夫链对PEF中相邻样本之间的相关性进行建模,然后将经验矩阵的子集用作带有SVM分类器(支持向量机)的隐写分析器的特征。实验结果表明,对于未压缩的视频,其新颖功能比以前的视频隐写分析性能更好,并且与最初设计用于图像隐写分析的众所周知的SPAM(相减像素邻接模型)功能相似。对于经过失真压缩的视频,其新颖功能比经过测试的其他功能要好。

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