一种针对运动矢量隐写的自适应检测策略

Peipei Wang, Yun Cao, Xianfeng Zhao, Haibo Yu
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引用次数: 5

摘要

本文的目标是提高当前视频隐写分析中基于运动矢量(MV)检测的隐写性能。注意到许多基于mv的方法以内容自适应的方式嵌入了秘密位。通常,修改只应用于合格的mv,这意味着在嵌入后帧之间修改的mv的数量是不同的。另一方面,目前几乎所有的隐写分析方法都忽略了这种不均匀分布。他们将视频平均划分为帧组,并使用一组内的所有mv计算每个单个特征向量。为了获得更好的分类性能,我们建议采用自适应方式进行隐写分析。首先,根据帧动态将视频分成不同长度的组。然后在每一组中,使用所有可疑的mv(可能被修改的mv)计算单个特征向量。实验结果表明了该策略的有效性。
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An adaptive detecting strategy against motion vector-based steganography
The goal of this paper is to improve the performance of the current video steganalysis in detecting motion vector (MV)-based steganography. It is noticed that many MV-based approaches embed secret bits in content adaptive manners. Typically, the modifications are applied only to qualified MVs, which implies that the number of modified MVs varies among frames after embedding. On the other hand, nearly all the current steganalytic methods ignore such uneven distribution. They divide the video into frame groups equally and calculate every single feature vector using all MVs within one group. For better classification performances, we suggest performing steganalysis also in an adaptive way. First, divide the video into groups with variable lengths according to frame dynamics. Then within each group, calculate a single feature vector using all suspicious MVs (MVs that are likely to be modified). The experimental results have shown the effectiveness of our proposed strategy.
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