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Steganalysis of additive noise modelable information hiding

机译:隐藏分析可加性噪声可建模信息隐藏

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摘要

The process of information hiding is modeled in the context of additive noise. Under an independence assumption, the histogram of the stegomessage is a convolution of the noise probability mass function (PMF) and the original histogram. In the frequency domain this convolution is viewed as a multiplication of the histogram characteristic function (HCF) and the noise characteristic function. Least significant bit, spread spectrum, and DCT hiding methods for images are analyzed in this framework. It is shown that these embedding methods are equivalent to a lowpass filtering of histograms that is quantified by a decrease in the HCF center of mass (COM). These decreases are exploited in a known scheme detection to classify unaltered and spread spectrum images using a bivariate classifier. Finally, a blind detection scheme is built that uses only statistics from unaltered images. By calculating the Mahalanobis distance from a test COM to the training distribution, a threshold is used to identify steganographic images. At an embedding rate of 1 b.p.p. greater than 95% of the stegoimages are detected with false alarm rate of 5%.
机译:信息隐藏的过程是在加性噪声的背景下建模的。在独立性假设下,隐身消息的直方图是噪声概率质量函数(PMF)与原始直方图的卷积。在频域中,该卷积被视为直方图特征函数(HCF)与噪声特征函数的乘积。在此框架中分析了图像的最低有效位,扩频和DCT隐藏方法。结果表明,这些嵌入方法等效于直方图的低通滤波,该直通图的低通滤波通过降低HCF重心(COM)来量化。在已知的方案检测中利用这些减少来使用双变量分类器对未改变的频谱图像和扩展频谱图像进行分类。最终,建立了一种盲检测方案,该方案仅使用未更改图像的统计信息。通过计算从测试COM到训练分布的Mahalanobis距离,可以使用阈值来识别隐写图像。嵌入速率为1 b.p.p.侦测到超过95%的隐身图像,误报率为5%。

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