Extracting Protocol Format as State Machine via Controlled Static Loop Analysis
May 22, 2023 Β· Declared Dead Β· π USENIX Security Symposium
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Authors
Qingkai Shi, Xiangzhe Xu, Xiangyu Zhang
arXiv ID
2305.13483
Category
cs.CR: Cryptography & Security
Cross-listed
cs.PL,
cs.SE
Citations
15
Venue
USENIX Security Symposium
Last Checked
3 months ago
Abstract
Reverse engineering of protocol message formats is critical for many security applications. Mainstream techniques use dynamic analysis and inherit its low-coverage problem -- the inferred message formats only reflect the features of their inputs. To achieve high coverage, we choose to use static analysis to infer message formats from the implementation of protocol parsers. In this work, we focus on a class of extremely challenging protocols whose formats are described via constraint-enhanced regular expressions and parsed using finite-state machines. Such state machines are often implemented as complicated parsing loops, which are inherently difficult to analyze via conventional static analysis. Our new technique extracts a state machine by regarding each loop iteration as a state and the dependency between loop iterations as state transitions. To achieve high, i.e., path-sensitive, precision but avoid path explosion, the analysis is controlled to merge as many paths as possible based on carefully-designed rules. The evaluation results show that we can infer a state machine and, thus, the message formats, in five minutes with over 90% precision and recall, far better than state of the art. We also applied the state machines to enhance protocol fuzzers, which are improved by 20% to 230% in terms of coverage and detect ten more zero-days compared to baselines.
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