基于局部泛化误差模型的盲隐写特征选择

Zhi-Min He, Wing W. Y. Ng, P. Chan, D. Yeung
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引用次数: 7

摘要

隐写分析是一种对抗隐写术的技术。针对盲隐写分析,人们提出了不同的特征提取方法。在攻击不同类型的隐写时,它们有自己的优势。将不同的特征集组合在一起可以提高隐写分析系统的性能。然而,它同时会大大增加特征的维数。同时,它可能在系统中有许多不相关的特性。适当的特征选择方法可以降低隐写分析的计算复杂度,提高隐写分析的性能。本文提出了一种基于局部泛化误差模型(L-GEM)的特征选择方法,为隐写分析系统选择最相关的特征子集。将该方法与另外两种现成的特征选择方法进行了比较。实验结果表明,该方法优于其他两种特征选择方法。采用所提出的特征选择方法的隐写分析比使用完整的特征集的隐写分析具有更高的平均测试精度。
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Feature selection for blind steganalysis using localized generalization error model
Steganalysis is a technique to fight against steganography. Different kinds of feature extraction methods have been proposed for blind steganalysis. They have their own advantages when attacking different kinds of steganography. Making a combination of different feature sets will improve the performance of the steganalysis system. However, it will increase the dimensionality of features largely at the same time. Meanwhile, it may have many irrelevant features in the system. A proper feature selection method could decrease the computational complexity and also enhance the performance of the steganalysis. In this paper, we proposed a feature selection method based on the Localized Generalization Error Model (L-GEM) to selection the most relevant feature subset for steganalysis system. The proposed method is compared with two other off-the-shelf feature selection methods. The experimental results show that the proposed method outperforms the other two feature selection methods. The steganalysis with the proposed feature selection method yields a higher average testing accuracy than that of using full set of features.
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