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Cover Estimation and Payload Location using Markov Random Fields

机译:使用马尔可夫随机场进行覆盖估计和有效载荷位置

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Payload location is an approach to find the message bits hidden in steganographic images, but not necessarily their logical order. Its success relies primarily on the accuracy of the underlying cover estimators and can be improved if more estimators are used. This paper presents an approach based on Markov random field to estimate the cover image given a stego image. It uses pairwise constraints to capture the natural two-dimensional statistics of cover images and forms a basis for more sophisticated models. Experimental results show that it is competitive against current state-of-the-art estimators and can locate payload embedded by simple LSB steganography and group-parity steganography. Furthermore, when combined with existing estimators, payload location accuracy improves significantly.
机译:有效负载位置是一种查找隐藏在密写图像中的消息位的方法,但不一定要查找其逻辑顺序。它的成功主要取决于基础覆盖估算器的准确性,如果使用更多的估算器,则可以提高准确性。本文提出了一种基于马尔可夫随机场的方法,用于在给定隐身图像的情况下估计覆盖图像。它使用成对约束来捕获封面图像的自然二维统计信息,并为更复杂的模型奠定了基础。实验结果表明,它与当前的最新估算器相比具有竞争力,并且可以通过简单的LSB隐写术和组奇偶校验隐写术来定位嵌入的有效负载。此外,与现有的估算器结合使用时,有效载荷的定位精度将大大提高。

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