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Blind steganalysis method for JPEG steganography combined with the semisupervised learning and soft margin support vector machine

机译:联合半监督学习和软边际支持向量机的JPEG密写盲隐写分析方法

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摘要

Stego images embedded by unknown steganographic algorithms currently may not be detected by using steganalysis detectors based on binary classifier. However, it is difficult to obtain high detection accuracy by using universal steganalysis based on one-class classifier. For solving this problem, a blind detection method for JPEG steganography was proposed from the perspective of information theory. The proposed method combined the semisupervised learning and soft margin support vector machine with steganalysis detector based on one-class classifier to utilize the information in test data for improving detection performance. Reliable blind detection for JPEG steganography was realized only using cover images for training. The experimental results show that the proposed method can contribute to improving the detection accuracy of steganalysis detector based on one-class classifier and has good robustness under different source mismatch conditions. (C) 2015 SPIE and IS&T
机译:当前,使用基于二进制分类器的隐写分析检测器可能无法检测到未知隐写算法所嵌入的隐身图像。然而,通过使用基于一类分类器的通用隐写分析难以获得高检测精度。为了解决这个问题,从信息论的角度提出了一种JPEG隐写的盲检测方法。该方法将半监督学习和软边界支持向量机与基于一类分类器的隐写分析检测器相结合,利用测试数据中的信息来提高检测性能。仅使用封面图像进行训练,即可实现JPEG隐写术的可靠盲检测。实验结果表明,该方法可以提高基于一类分类器的隐写分析检测器的检测精度,在不同的源不匹配条件下具有良好的鲁棒性。 (C)2015 SPIE和IS&T

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