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Information similarity metrics in information security and forensics.

机译:信息安全和取证中的信息相似性指标。

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摘要

We study two information similarity measures, relative entropy and the similarity metric, and methods for estimating them. Relative entropy can be readily estimated with existing algorithms based on compression. The similarity metric, based on algorithmic complexity, proves to be more difficult to estimate due to the fact that algorithmic complexity itself is not computable. We again turn to compression for estimating the similarity metric. Previous studies rely on the compression ratio as an indicator for choosing compressors to estimate the similarity metric. This assumption, however, is fundamentally flawed. We propose a new method to benchmark compressors for estimating the similarity metric. To demonstrate its use, we propose to quantify the security of a stegosystem using the similarity metric. Unlike other measures of steganographic security, the similarity metric is not only a true distance metric, but it is also universal in the sense that it is asymptotically minimal among all computable metrics between two objects. Therefore, it accounts for all similarities between two objects. In contrast, relative entropy, a widely accepted steganographic security definition, only takes into consideration the statistical similarity between two random variables. As an application, we present a general method for benchmarking stegosystems. The method is general in the sense that it is not restricted to any covertext medium and therefore, can be applied to a wide range of stegosystems. For demonstration, we analyze several image stegosystems using the newly proposed similarity metric as the security metric. The results show the true security limits of stegosystems regardless of the chosen security metric or the existence of steganalysis detectors. In other words, this makes it possible to show that a stegosystem with a large similarity metric is inherently insecure, even if it has not yet been broken.
机译:我们研究了两种信息相似性度量,相对熵和相似性度量及其估计方法。相对熵可以使用基于压缩的现有算法轻松估算。由于算法复杂性本身不可计算,因此基于算法复杂性的相似性度量被证明更加难以估计。我们再次转向压缩以估计相似性度量。先前的研究依靠压缩比作为选择压缩机以评估相似性指标的指标。但是,这种假设从根本上来说是有缺陷的。我们提出了一种新方法来对压缩器进行基准测试,以估计相似性指标。为了证明其用途,我们建议使用相似性度量来量化隐身系统的安全性。与其他隐秘安全性度量不同,相似性度量不仅是真实距离度量,而且在两个对象之间所有可计算度量中都渐近最小的意义上也是通用的。因此,它考虑了两个对象之间的所有相似性。相反,相对熵(一种广泛接受的隐写安全性定义)仅考虑了两个随机变量之间的统计相似性。作为一个应用程序,我们提出了一种基准测试隐身系统的通用方法。从不限于任何covertext介质的意义上讲,该方法是通用的,因此可以应用于多种隐身系统。为了演示,我们使用新提出的相似性度量作为安全性度量来分析几种图像隐身系统。结果显示了隐身系统的真实安全限制,无论选择的安全度量标准还是隐匿分析检测器的存在。换句话说,这使得有可能表明具有较大相似性度量的隐身系统本质上是不安全的,即使它尚未被破坏也是如此。

著录项

  • 作者

    Quach, Tu-Thach.;

  • 作者单位

    The University of New Mexico.;

  • 授予单位 The University of New Mexico.;
  • 学科 Engineering Computer.Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 116 p.
  • 总页数 116
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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