Real-world actor-based image steganalysis via classifier inconsistency detection

Daniel Lerch-Hostalot, D. Megías
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引用次数: 1

Abstract

In this paper, we propose a robust method for detecting guilty actors in image steganography while effectively addressing the Cover Source Mismatch (CSM) problem, which arises when classifying images from one source using a classifier trained on images from another source. Designed for an actor-based scenario, our method combines the use of Detection of Classifier Inconsistencies (DCI) prediction with EfficientNet neural networks for feature extraction, and a Gradient Boosting Machine for the final classification. The proposed approach successfully determines whether an actor is innocent or guilty, or if they should be discarded due to excessive CSM. We show that the method remains reliable even in scenarios with high CSM, consistently achieving accuracy above 80% and outperforming the baseline method. This novel approach contributes to the field of steganalysis by offering a practical and efficient solution for handling CSM and detecting guilty actors in real-world applications.
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现实世界中基于角色的图像隐写分析,通过分类器不一致检测
在本文中,我们提出了一种鲁棒的方法来检测图像隐写中的犯罪行为者,同时有效地解决覆盖源不匹配(CSM)问题,该问题在使用来自另一个源的图像训练的分类器对来自一个源的图像进行分类时出现。我们的方法是为基于参与者的场景而设计的,它结合了使用检测分类器不一致性(DCI)预测和用于特征提取的effentnet神经网络,以及用于最终分类的梯度增强机。所提出的方法成功地确定了演员是无辜的还是有罪的,或者他们是否应该因为过度的CSM而被抛弃。我们表明,即使在高CSM的情况下,该方法仍然可靠,始终达到80%以上的准确率,优于基线方法。这种新颖的方法为处理CSM和检测真实应用中的罪犯提供了一种实用而有效的解决方案,从而为隐写分析领域做出了贡献。
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