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首页> 外文期刊>Journal of electronic imaging >Deep convolutional neural network-based feature extraction for steganalysis of content-adaptive JPEG steganography
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Deep convolutional neural network-based feature extraction for steganalysis of content-adaptive JPEG steganography

机译:基于深度卷积神经网络的特征提取用于内容自适应JPEG隐写分析

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摘要

Deep learning-based steganalysis techniques have significantly progressed in recent years. Compared with typical steganalysis methods using rich model features and classifiers, deep learning-based steganalysis methods usually train a deep convolutional neural network (CNN) as the steganography detector. One advantage of a deep CNN is the strong capability for discriminative feature learning. The input feature map of the fully connected layer is the steganalysis feature learned using the deep CNN. We can, therefore, extract the steganalysis feature based on the trained deep CNN. Compared with steganalysis features constructed by hand, the extraction of steganalysis features using a deep CNN can take advantage of the strong feature-learning capability of such a network. Therefore, two types of typical steganalysis frameworks are first compared. Then, a deep CNN for steganalysis feature learning is constructed, and the setting of the image preprocessing layer is discussed. Next, the detection performances of the different learned steganalysis features are compared. Finally, the detailed extraction process of the proposed learned steganalysis feature is described. The experiment results show that the proposed steganalysis method, combining learned and handcrafted steganalysis features, can significantly improve the detection performance for content-adaptive JPEG steganography. (C) 2019 SPIE and IS&T
机译:近年来,基于深度学习的隐写分析技术取得了显着进步。与使用丰富模型特征和分类器的典型隐写分析方法相比,基于深度学习的隐写分析方法通常训练深度卷积神经网络(CNN)作为隐写检测器。深度CNN的优点之一是具有强大的判别特征学习能力。完全连接层的输入特征图是使用深层CNN学习的隐写分析特征。因此,我们可以基于经过训练的深度CNN提取隐写分析特征。与手动构建的隐写分析特征相比,使用深层CNN提取隐写分析特征可以利用这种网络强大的特征学习能力。因此,首先比较两种典型的隐写分析框架。然后,构造了一个用于隐写特征学习的深层CNN,并讨论了图像预处理层的设置。接下来,比较不同学习的隐写分析特征的检测性能。最后,描述了所提出的学习隐写分析特征的详细提取过程。实验结果表明,提出的隐写分析方法结合了学习的和手工的隐写分析特征,可以显着提高内容自适应JPEG隐写术的检测性能。 (C)2019 SPIE和IS&T

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