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Steganalysis Over Large-Scale Social Networks With High-Order Joint Features and Clustering Ensembles

机译:具有高阶联合特征和聚类集成的大规模社交网络隐写分析

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This paper tackles a recent challenge in identifying culprit actors, who try to hide confidential payload with steganography, among many innocent actors in social media networks. The problem is called steganographer detection problem and is significantly different from the traditional stego detection problem that classifies an individual object as a cover or a stego. To solve the steganographer detection problem over large-scale social media networks, this paper proposes a method that uses high-order joint features and clustering ensembles. It employs 250-D features calculated from the high-order joint matrices of Discrete Cosine Transform (DCT) coefficients of JPEG images, which indicate the dependencies of image content. Furthermore, a number of hierarchical sub-clusterings trained by the features are integrated as a clustering ensemble based on the majority voting strategy, which is used to make optimal decisions on suspicious steganographers. Experimental results show that the proposed scheme is effective and efficient in identifying potential steganographers in large-scale social media networks, and has better performance when tested against the state-of-the-art steganographic methods.
机译:本文解决了在社交媒体网络中的许多无辜参与者中,找出试图用隐匿术隐藏机密有效载荷的罪魁祸首的挑战。该问题称为隐身术检测问题,与传统的隐身检测问题显着不同,传统的隐身检测问题将单个对象分类为掩盖或隐身。为解决大规模社交媒体网络上的隐写文字检测问题,提出了一种利用高阶联合特征和聚类集成的方法。它采用了从JPEG图像的离散余弦变换(DCT)系数的高阶联合矩阵计算出的250-D特征,这些特征表示图像内容的依赖性。此外,由这些功能训练的多个层次子集群被集成为基于多数投票策略的聚类集成,用于对可疑隐写术者做出最佳决策。实验结果表明,该方案在大规模社交媒体网络中识别潜在的隐写术者是有效且高效的,并且在针对最新隐写术方法进行测试时具有更好的性能。

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