Do you see what i see?

P. S. Cerkez
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Abstract

Semagrams are a subset of steganography. When a message is transmitted in a non-textual format, (i.e., in the visual content of an image), it is referred to as a semagram. While semagrams are relatively easy to create (as shown in published papers covering hiding techniques), detecting a hidden message in or embedded as an image-based semagram is a greater magnitude of difficultly than typical digital steganography. US Patents issued based on semagram technology show that this feature has been exploited in the copyright/watermarking world to increase protection. In a semagram, the image is the message and they work well for simple messages and dead drops. Attacks on semagrams are primarily visual examinations of artifacts. In the counter-espionage world, the rule of the thumb is that there is always a message hidden in an image or graphic, it is simply up to the steganalyst to find it. In short, detecting semagrams is a matter of recognizing patterns of patterns that represent a hidden message within an image. This presentation provides a brief summary of the technology underlying semagrams, present a short non-technical discussion of the technology used in the attack on semagrams, followed by a discussion on current work and planned future implementations of the proven semagram detection ANN. It will focus on extending the ANN to other domains (e.g., non-visual spectrums, multi/cross spectrum correlation, scene identification, image classification) and efforts to improve the processing speed and throughput via parallel/distributed methods.
你看到我看到的了吗?
semagram是隐写术的一个子集。当消息以非文本格式(即以图像的视觉内容)传输时,它被称为符号。虽然创建符号相对容易(如涉及隐藏技术的已发表论文所示),但检测隐藏在或嵌入为基于图像的符号中的隐藏消息比典型的数字隐写术要困难得多。基于semagram技术发布的美国专利表明,该特性已在版权/水印领域得到利用,以增加保护。在信号报中,图像就是信息,它们可以很好地用于简单的信息和情报传递点。对符号图的攻击主要是对工件的视觉检查。在反间谍领域,经验法则是,图像或图形中总是隐藏着信息,只需要隐写分析人员就能找到它。简而言之,检测信号图就是识别表示图像中隐藏信息的模式的模式。本报告简要总结了信号报的底层技术,对信号报攻击中使用的技术进行了简短的非技术讨论,然后讨论了经过验证的信号报检测人工神经网络的当前工作和计划的未来实现。它将专注于将人工神经网络扩展到其他领域(例如,非视觉光谱、多/交叉光谱相关、场景识别、图像分类),并努力通过并行/分布式方法提高处理速度和吞吐量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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