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Steganalysis Feature Improvement using Expectation Maximization

机译:使用期望最大化的麻析统计功能改善

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Images and data files provide an excellent opportunity for concealing illegal or clandestine material. Currently, there are over 250 different tools which embed data into an image without causing noticeable changes to the image. From a forensics perspective, when a system is confiscated or an image of a system is generated the investigator needs a tool that can scan and accurately identify files suspected of containing malicious information. The identification process is termed the steganalysis problem which focuses on both blind identification, in which only normal images are available for training, and multi-class identification, in which both the clean and stego images at several embedding rates are available for training. In this paper an investigation of a clustering and classification technique (Expectation Maximization with mixture models) is used to determine if a digital image contains hidden information. The steganalysis problem is for both anomaly detection and multi-class detection. The various clusters represent clean images and stego images with between 1% and 10% embedding percentage. Based on the results it is concluded that the EM classification technique is highly suitable for both blind detection and the multi-class problem.
机译:图像和数据文件为隐藏违法或秘密材料提供了绝佳的机会。目前,有超过250个不同的工具,它将数据嵌入到图像中而不会导致图像的显着变化。从取证角度来看,当系统被没收或生成系统的图像时,调查人员需要一个可以扫描和准确地识别怀疑含有恶意信息的文件的工具。识别过程被称为隐分问题,其侧重于盲识别,其中只有正常图像可用于训练,以及多级识别,其中若干嵌入率的清洁和STEGO图像都可用于训练。在本文中,使用对聚类和分类技术的研究(利用混合模型的预期最大化)来确定数字图像是否包含隐藏信息。隐草问题适用于异常检测和多级检测。各种集群代表清洁图像和STEGO图像,嵌入百分比的1%至10%。基于结果,得出结论,EM分类技术非常适合盲检测和多级问题。

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