一种基于协同表示的通用JPEG图像隐写分析方法

J. Guo, Yanqing Guo, Lingyun Li, Ming Li
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引用次数: 4

摘要

近年来,由于商业和国家安全的需要,人们提出了许多先进的通用JPEG图像隐写分析方法。最近,提出了一种新的基于稀疏表示的方法,将稀疏编码应用于图像隐写分析[4]。尽管实验结果令人满意,但该方法过于强调了11范数稀疏性的作用,而完全忽略了协同表示的努力。本文主要研究了二分类模型中的最小二乘问题,提出了一种基于协同表示的JPEG图像隐写分析方法。我们仍然在两个类(cover和stego)的训练样本上协作表示测试样本,而正则化项从11范数变为12范数,并且每个类特定的表示残差拥有一个额外的除数。实验结果表明,本文提出的隐写分析方法比最近提出的基于稀疏表示的隐写分析方法和传统的基于支持向量机的隐写分析方法具有更好的性能。大量的实验清楚地表明,我们的方法具有非常有竞争力的隐写性能,而它的复杂性显著降低。
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A universal JPEG image steganalysis method based on collaborative representation
In recent years, plenty of advanced approaches for universal JPEG image steganalysis have been proposed due to the need of commercial and national security. Recently, a novel sparse-representation-based method was proposed, which applied sparse coding to image steganalysis [4]. Despite satisfying experimental results, the method emphasized too much on the role of l1-norm sparsity, while the effort of collaborative representation was totally ignored. In this paper, we focus on the least square problem in a binary classification model and present a similar yet much more efficient JPEG image steganalysis method based on collaborative representation. We still represent a testing sample collaboratively over the training samples from both classes (cover and stego), while the regularization term is changed from l1-norm to l2-norm and each class-specific representation residual owns an extra divisor. Experimental results show that our proposed steganalysis method performs better than the recently presented sparse-representation-based method as well as the traditional SVM-based method. Extensive experiments clearly show that our method has very competitive steganalysis performance, while it has significantly less complexity.
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