基于多类扩展残差网络的隐写检测

Mingjie Zheng, S. Zhong, Songtao Wu, Jianmin Jiang
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引用次数: 11

摘要

隐写检测任务是在大量的无辜用户中识别出试图通过隐写方法隐藏机密信息的犯罪用户。该任务的重大挑战是如何收集证据来识别带有可疑图像的犯罪用户,这些图像嵌入了由未知隐写和负载生成的秘密信息。不幸的是,现有的隐写分析方法是为二值分类服务的。这使得对不同有效载荷的图像进行分类变得更加困难,特别是在测试数据集中的图像有效载荷没有提前提供的情况下。本文提出了一种基于多类深度神经网络的隐写检测方法。在训练阶段,训练网络对六种载荷类型的图像进行分类。利用残差学习和扩展残差学习,网络可以在更大的接受域内保存甚至增强来自秘密信息的弱隐进信号。在推理阶段,使用学习到的模型提取判别特征,可以捕获有罪用户和无辜用户之间的差异。一系列的经验实验结果表明,该方法在嵌入载荷较低的情况下,在空间域和频域都取得了较好的性能。该方法提高了隐写算法的鲁棒性,为解决有效载荷不匹配问题提供了一种可能的解决方案
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Steganographer Detection based on Multiclass Dilated Residual Networks
Steganographer detection task is to identify criminal users, who attempt to conceal confidential information by steganography methods, among a large number of innocent users. The significant challenge of the task is how to collect the evidences to identify the guilty user with suspicious images, which are embedded with secret messages generating by unknown steganography and payload. Unfortunately, existing methods for steganalysis were served for the binary classification. It makes them harder to classify the images with different kinds of payloads, especially when the payloads of images in test dataset have not been provided in advance. In this paper, we propose a novel steganographer detection method based on multiclass deep neural networks. In the training stage, the networks are trained to classify the images with six types of payloads. The networks can preserve even strengthen the weak stego signals from secret messages in much larger receptive filed by virtue of residual and dilated residual learning. In the inference stage, the learnt model is used to extract the discriminative features, which can capture the difference between guilty users and innocent users. A series of empirical experimental results demonstrate that the proposed method achieves good performance in spatial and frequency domains even though the embedding payload is low. The proposed method achieves a higher level of robustness of inter-steganographic algorithms and can provide a possible solution to address the payload mismatch problem
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