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Deep Learning on Spatial Rich Model for Steganalysis

机译:STEGALALYS的空间丰富模型深入学习

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Recent studies have indicated that deep learning for steganalysis may be a tendency in future. The paper novelly proposes a feature-based deep learning classifier for steganalysis. Analysis shows SRM features are suitable to be the input of deep learning. On this basis, a modified convolutional neural network (CNN) is designed for detection. In the initial layers, taking the thought of ensemble classifier for reference, we extract L subspaces of the entire SRM feature space, and process each subspace respectively. In the deeper layers, two different structures are designed. One is complex in structure and hard to train, but achieve better detection accuracy; the other is simple in structure and easy to train, but the achieved detection accuracy is a little worse. Experiments show that the proposed method achieves comparable performance on BOSSbase compared to GNCNN and ensemble classifier with SRM features.
机译:最近的研究表明,STEGALALY的深度学习可能是未来的趋势。本文新化提出了一种基于特征的深度学习分类器,用于隐藏分析。分析显示SRM功能适合成为深度学习的输入。在此基础上,设计了一种改进的卷积神经网络(CNN)被设计用于检测。在初始图层中,采用集合分类器的思想参考,我们分别提取整个SRM特征空间的L子空间,并分别处理每个子空间。在更深层中,设计了两种不同的结构。一个是结构中的复杂,难以训练,但达到更好的检测精度;另一种结构简单,易于训练,但实现的检测精度有点差。实验表明,与具有SRM功能的GNCNN和集合分类器相比,该方法在Bossbase上实现了可比性性能。

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