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Quantitative Steganalysis Based on Wavelet Domain HMT and PLSR

机译:基于小波域HMT和PLSR的定量隐写分析

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摘要

Aiming at the problem of estimation of secret message length in steganalysis, this paper presents a quantitative steganalysis method based on HMT (Hidden Markov Tree) and PLSR (Partial Least Squares Regression) to solve the problem. In this paper, three 2-State HMT models are modeled respectively for wavelet coefficients in the horizontal, vertical and diagonal directions. In order to calculate the parameters of HMT, EM (Estimation and Maximization) algorithm is adopted to train the HMT models. The parameters are used as the 66-D feature of image. Then, the quantitative steganalyzer which is used to estimate the message length is established by combining HMT with PLSR. The proposed scheme is evaluated by constructing quantitative steganalyzers for F5, outguess and MB, simulation results demonstrate that these quantitative steaganalyzers can estimate the message embedding rates accurately and fast.
机译:针对隐写分析中秘密消息长度的估计问题,提出了一种基于隐马尔可夫树和偏最小二乘回归的定量隐写分析方法。在本文中,分别针对水平,垂直和对角线方向上的小波系数建模了三个2状态HMT模型。为了计算HMT的参数,采用EM(估计和最大化)算法训练HMT模型。这些参数用作图像的66-D特征。然后,通过将HMT与PLSR相结合,建立了用于估计消息长度的定量隐写分析器。通过针对F5,Outgues和MB构建定量隐写分析器对所提出的方案进行了评估,仿真结果表明,这些定量隐写分析器可以准确,快速地估计消息嵌入率。

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