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Searching For Hidden Messages: Automatic Detection of Steganography

机译:搜索隐藏的消息:自动检测隐写术

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摘要

Steganography is the field of hiding messages in apparently innocuous media (e.g. images), and steganalysis is the field of detecting these covert messages. Almost all steganalysis consists of hand-crafted tests or human visual inspection to detect whether a file contains a message hidden by a specific Steganography algorithm. These approaches are very fragile - trivial changes in a Steganography algorithm will often render a steganalysis approach useless, and human inspection does not scale. We propose a machine learning (ML) approach to steganalysis. First, a media file is represented as a canvas - the available space within the file to hide a message. Those features that can distinguish clean from stego-bearing files are then selected. We use ML algorithms to distinguish clean and stego-bearing files. The results reported here show that ML algorithms work in both content- and compression-based image formats, outperforming at least one current hand crafted steganalysis technique in the latter. Our current work can detect previously seen (trained on) Steganography techniques, and we discuss extensions that we believe will be able to detect Steganography using more sophisticated algorithms, as well as the use of previously unseen Steganography algorithms.
机译:隐写术是将消息隐藏在看起来无害的媒体(例如图像)中的领域,而隐写分析是检测这些秘密消息的领域。几乎所有的隐写分析都是由手工测试或人工视觉检查组成,以检测文件是否包含特定隐写算法所隐藏的消息。这些方法非常脆弱-隐写术算法中的微小变化通常会使隐写分析方法变得无用,并且人工检查无法扩展。我们提出了一种用于隐写分析的机器学习(ML)方法。首先,媒体文件被表示为画布-文件中用于隐藏消息的可用空间。然后选择那些可以区分干净文件和隐秘文件的功能。我们使用ML算法来区分干净的文件和隐秘的文件。此处报告的结果表明,机器学习算法既可以用于基于内容的图像格式,也可以用于基于压缩的图像格式,其性能优于至少一种当前的手工隐写分析技术。我们当前的工作可以检测到以前见过的(受过训练的)隐写术技术,并且我们讨论了一些扩展,我们相信这些扩展将能够使用更复杂的算法以及以前看不见的隐写术算法来检测隐写术。

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