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Stego-Breaker: Defeating the Steganographic Systems through Genetic-X-Means approach using Image Quality Metrics

机译:Stego断路器:使用图像质量指标通过Genetic-X-Means方法击败隐法制术系统

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Steganography is used to hide the occurrence of communication. This creates a potential problem when this technology is misused for planning criminal activities. Differentiating anomalous images (stego image) from pure images (cover image) is difficult and tedious. This paper investigates the use of a Genetic-X-means classifier, which distinguishes a pure image from the adulterated one. The basic idea is that, the various Image Quality Metrics (IQMs) calculated on cover images and on stego-images vis-??-vis their denoised versions, are statistically different. Our model employs these IQMs to steganalyse the image data. Genetic paradigm is exploited to select the IQMs that are sensitive to various embedding techniques. The classifier between cover and stego-files is built using X-means clustering on the selected feature set. The presented method can not only detect the presence of hidden message but also identify the hiding domains. The experimental results show that the combination strategy (Genetic-X-means) can improve the classification precision even with lesser payload compared to the traditional ANN (Back Propagation Network).
机译:隐写术用于隐藏通信的发生。当这项技术滥用计划犯罪活动时,这会产生潜在的问题。从纯图像(覆盖图像)的分化异常图像(STEGO图像)是困难和繁琐的。本文调查了遗传-X型分类器的使用,该分类器将纯图像与掺假的X型分类器的用途进行了分类。基本思想是,在封面图像和stego-image上计算的各种图像质量指标(IQMS) - 在统计上不同。我们的模型采用这些IQMS来扼杀图像数据。利用遗传范式来选择对各种嵌入技术敏感的IQM。封面和stego文件之间的分类器是在所选功能集上使用X-means群集构建的。呈现的方法不仅可以检测隐藏消息的存在,还可以识别隐藏域。实验结果表明,与传统的ANN(后传播网络)相比,组合策略(Genetic-X型)可以提高分类精度。

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