SÁDI -数据类型识别的统计分析

Sarah J. Moody, R. Erbacher
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引用次数: 45

摘要

数字取证分析的一项关键任务是在计算机系统中定位相关信息。数据相关性的识别通常取决于所检查数据类型的识别。典型的文件类型标识基于文件扩展名或魔法键。这些典型的技术在许多典型的取证分析场景中都失败了,比如需要处理嵌入式数据,比如Microsoft Word文件,或者文件片段。SADI(统计分析数据识别)技术以这样一种方式对数据的字节值进行统计分析,即该技术的准确性不依赖于可能具有误导性的元数据信息,而是依赖于数据本身的值。SADI的发展提供了识别数字存储数据实际代表的内容的能力,并且还允许选择性地提取部分数据以供进一步调查;即,在嵌入式数据的情况下。因此,我们的研究提供了一种更有效的类型识别技术,它不会在文件片段、嵌入数据类型或混淆数据上失败。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SÁDI - Statistical Analysis for Data Type Identification
A key task in digital forensic analysis is the location of relevant information within the computer system. Identification of the relevancy of data is often dependent upon the identification of the type of data being examined. Typical file type identification is based upon file extension or magic keys. These typical techniques fail in many typical forensic analysis scenarios such as needing to deal with embedded data, such as with Microsoft Word files, or file fragments. The SADI (Statistical Analysis Data Identification) technique applies statistical analysis of the byte values of the data in such a way that the accuracy of the technique does not rely on the potentially misleading metadata information but rather the values of the data itself. The development of SADI provides the capability to identify what digitally stored data actually represents and will also allow for the selective extraction of portions of the data for additional investigation; i.e., in the case of embedded data. Thus, our research provides a more effective type identification technique that does not fail on file fragments, embedded data types, or with obfuscated data.
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