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Effect of Imprecise Knowledge of the Selection Channel on Steganalysis

机译:选择通道的不精确知识对隐写分析的影响

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It has recently been shown that steganalysis of content-adaptive steganography can be improved when the Warden incorporates in her detector the knowledge of the selection channel - the probabilities with which the individual cover elements were modified during embedding. Such attacks implicitly assume that the Warden knows at least approximately the payload size. In this paper, we study the loss of detection accuracy when the Warden uses a selection channel that was imprecisely determined either due to lack of information or the stego changes themselves. The loss is investigated for two types of qualitatively different detectors - binary classifiers equipped with selection-channel-aware rich models and optimal detectors derived using the theory of hypothesis testing from a cover model. Two different embedding paradigms are addressed - steganography based on minimizing distortion and embedding that minimizes the detectability of an optimal detector within a chosen cover model. Remarkably, the experimental and theoretical evidence are qualitatively in agreement across different embedding methods, and both point out that inaccuracies in the selection channel do not have a strong effect on steganalysis detection errors. It pays off to use imprecise selection channel rather than none. Our findings validate the use of selection-channel-aware detectors in practice.
机译:最近已显示,当Warden在其检测器中加入选择通道的知识时,可以改进内容自适应隐写术的隐写分析-在嵌入过程中修改各个封面元素的可能性。此类攻击隐含地假定看守至少知道大约有效载荷大小。在本文中,我们研究了当监狱长使用由于信息不足或隐身改变本身而无法精确确定的选择通道时,检测准确性的损失。研究了两种类型上质量不同的检测器的损耗-配备选择通道感知丰富模型的二元分类器和使用从覆盖模型进行假设检验的理论得出的最佳检测器。解决了两种不同的嵌入范例-基于最小化失真的隐写术和最小化所选封面模型中最佳检测器可检测性的嵌入。值得注意的是,在不同的嵌入方法中,实验和理论证据在质量上是一致的,并且都指出选择通道中的错误对隐写分析检测错误没有很大的影响。使用不精确的选择渠道而不是没有选择,是值得的。我们的发现验证了实践中选择通道感知检测器的使用。

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