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Digital video steganalysis using motion vector recovery-based features

机译:使用基于运动矢量恢复的功能进行数字视频隐写分析

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摘要

As a novel digital video steganography, the motion vector (MV)-based steganographic algorithm leverages the MVs as the information carriers to hide the secret messages. The existing steganalyzers based on the statistical characteristics of the spatial/frequency coefficients of the video frames cannot attack the MV-based steganography. In order to detect the presence of information hidden in the MVs of video streams, we design a novel MV recovery algorithm and propose the calibration distance histogram-based statistical features for steganalysis. The support vector machine (SVM) is trained with the proposed features and used as the steganalyzer. Experimental results demonstrate that the proposed steganalyzer can effectively detect the presence of hidden messages and outperform others by the significant improvements in detection accuracy even with low embedding rates.
机译:作为一种新颖的数字视频隐写术,基于运动矢量(MV)的隐写算法利用MV作为信息载体来隐藏秘密消息。基于视频帧的空间/频率系数的统计特性的现有隐写分析器不能攻击基于MV的隐写术。为了检测视频流的MV中隐藏的信息的存在,我们设计了一种新颖的MV恢复算法,并提出了基于校正距离直方图的统计特征进行隐写分析。支持向量机(SVM)经过训练后具有建议的功能,并用作隐写分析仪。实验结果表明,所提出的隐写分析器即使在嵌入率较低的情况下,也可以通过显着提高检测精度来有效地检测隐藏消息的存在,并胜过其他消息。

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