2007 | OriginalPaper | Buchkapitel
A Forced Sampled Execution Approach to Kernel Rootkit Identification
verfasst von : Jeffrey Wilhelm, Tzi-cker Chiueh
Erschienen in: Recent Advances in Intrusion Detection
Verlag: Springer Berlin Heidelberg
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Kernel rootkits are considered one of the most dangerous forms of malware because they reside inside the kernel and can perform the most privileged operations on the compromised machine. Most existing kernel rootkit detection techniques attempt to detect the existence of kernel rootkits, but cannot do much about removing them, other than booting the victim machine from a clean operating system image and configuration. This paper describes the design, implementation and evaluation of a kernel rootkit identification system for the Windows platform called Limbo, which prevents kernel rootkits from entering the kernel by checking the legitimacy of every kernel driver before it is loaded into the operating system. Limbo determines whether a kernel driver is a kernel rootkit based on its binary contents and run-time behavior. To expose the execution behavior of a kernel driver under test, Limbo features a
forced sampled execution
approach to traverse the driver’s control flow graph. Through a comprehensive characterization study of current kernel rootkits, we derive a set of run-time features that can best distinguish between legitimate and malicious kernel drivers. Applying a Naive Bayes classification algorithm on this chosen feature set, the first Limbo prototype is able to achieve 96.2% accuracy for a test set of 754 kernel drivers, 311 of which are kernel rootkits.