A Steganalytic Algorithm to Detect DCT-based Data Hiding Methods for H.264/AVC Videos

Peipei Wang, Yun Cao, Xianfeng Zhao, Meineng Zhu
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引用次数: 17

Abstract

This paper presents an effective steganalytic algorithm to detect Discrete Cosine Transform (DCT) based data hiding methods for H.264/AVC videos. These methods hide covert information into compressed video streams by manipulating quantized DCT coefficients, and usually achieve high payload and low computational complexity, which is suitable for applications with hard real-time requirements. In contrast to considerable literature grown up in JPEG domain steganalysis, so far there is few work found against DCT-based methods for compressed videos. In this paper, the embedding impacts on both spatial and temporal correlations are carefully analyzed, based on which two feature sets are designed for steganalysis. The first feature set is engineered as the histograms of noise residuals from the decompressed frames using 16 DCT kernels, in which a quantity measuring residual distortion is accumulated. The second feature set is designed as the residual histograms from the similar blocks linked by motion vectors between inter-frames. The experimental results have demonstrated that our method can effectively distinguish stego videos undergone DCT manipulations from clean ones, especially for those of high qualities.
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H.264/AVC视频中基于dct的数据隐藏方法的隐写分析算法
针对H.264/AVC视频中基于离散余弦变换(DCT)的数据隐藏方法,提出了一种有效的隐写分析算法。这些方法通过控制量化DCT系数,将隐蔽信息隐藏到压缩视频流中,通常具有高负载和低计算复杂度的特点,适合实时性要求较高的应用。与大量关于JPEG域隐写分析的文献相比,到目前为止,针对基于dct的压缩视频方法的研究还很少。本文仔细分析了嵌入对空间相关性和时间相关性的影响,并在此基础上设计了两个特征集用于隐写分析。第一个特征集被设计为使用16个DCT核的解压帧的噪声残差直方图,其中累积了一个测量残差失真的量。第二个特征集被设计为由帧间运动向量连接的相似块的残差直方图。实验结果表明,该方法可以有效区分经过DCT处理的隐写视频和干净视频,特别是高质量的隐写视频。
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