基于深度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: 12

摘要

隐写检测问题是在众多无辜的行为者中识别出试图通过隐写隐藏机密信息的犯罪行为者。这项任务具有重大的挑战,包括各种嵌入隐写算法和有效载荷,这些通常在实验室条件下隐写分析中避免。本文提出了一种基于深度残差网络的隐写检测模型。该方法增强了来自秘密信息的信号,有利于区分犯罪行为者和无辜行为者。综合实验表明,该模型在隐写检测任务中实现了极低的检测错误率。它也优于经典的富模型方法和其他基于CNN的方法。此外,该模型显示了跨隐写算法和跨有效载荷的鲁棒性。
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 via deep residual network
Steganographer detection problem is to identify culprit actors, who try to hide confidential information with steganography, among many innocent actors. This task has significant challenges, including various embedding steganographic algorithms and payloads, which are usually avoided in steganalysis under laboratory conditions. In this paper, we propose a novel steganographer detection model based on deep residual network. The proposed method strengthens the signal coming from secret messages, which is beneficial for the discrimination between guilty actors and innocent actors. Comprehensive experiments demonstrate that the proposed model achieves very low detection error rates in steganographer detection task. It also outperforms the classical rich model method and other CNN based method. Moreover, the model shows the robustness of inter-steganographic algorithms and inter-payloads.
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