Automated mapping of large binary objects using primitive fragment type classification

Digital Investigation(2010)

Cited 66|Views0
No score
Abstract
Security analysts, reverse engineers, and forensic analysts are regularly faced with large binary objects, such as executable and data files, process memory dumps, disk images and hibernation files, often Gigabytes or larger in size and frequently of unknown, suspect, or poorly documented structure. Binary objects of this magnitude far exceed the capabilities of traditional hex editors and textual command line tools, frustrating analysis. This paper studies automated means to map these large binary objects by classifying regions using a multi-dimensional, information-theoretic approach. We make several contributions including the introduction of the binary mapping metaphor and its associated applications, as well as techniques for type classification of low-level binary fragments. We validate the efficacy of our approach through a series of classification experiments and an analytic case study. Our results indicate that automated mapping can help speed manual and automated analysis activities and can be generalized to incorporate many low-level fragment classification techniques.
More
Translated text
Key words
low-level fragment classification technique,automated mapping,large binary object,reverse engineering,binary object,type classification,binary analysis,file carving,hex editors,classification experiment,binary mapping metaphor,low-level binary fragment,primitive fragment type classification,binary mapping,classification,automated analysis activity,paper studies automated mean
AI Read Science
Must-Reading Tree
Example
Generate MRT to find the research sequence of this paper
Chat Paper
Summary is being generated by the instructions you defined