pbSE: Phase-Based Symbolic Execution

Qixue Xiao, Yu Chen, Chengang Wu, Kang Li, Junjie Mao, Shize Guo, Yuanchun Shi
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引用次数: 1

Abstract

The study of software bugs has long been a key area in software security. Dynamic symbolic execution, in exploring the program's execution paths, finds bugs by analyzing all potential dangerous operations. Due to its high coverage and abilities to generate effective testcases, dynamic symbolic execution has attracted wide attention in the research community. However, the success of dynamic symbolic execution is limited due to complex program logic and its difficulty to handle large symbolic data. In our experiments we found that phase-related features of a program often prevents dynamic symbolic execution from exploring deep paths. On the basis of this discovery, we proposed a novel symbolic execution technology guided by program phase characteristics. Compared to KLEE, the most well-known symbolic execution approach, our method is capable of covering more code and discovering more bugs. We designed and implemented pbSE system, which was used to test several commonly used tools and libraries in Linux. Our results showed that pbSE on average covers code twice as much as what KLEE does, and we discovered 21 previously unknown vulnerabilities by using pbSE, out of which 7 are assigned CVE IDs.
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基于阶段的符号执行
对软件漏洞的研究一直是软件安全的一个关键领域。动态符号执行在探索程序的执行路径时,通过分析所有潜在的危险操作来发现错误。动态符号执行由于其高覆盖率和生成有效测试用例的能力,引起了学术界的广泛关注。然而,由于复杂的程序逻辑和处理大量符号数据的困难,动态符号执行的成功受到限制。在我们的实验中,我们发现程序的相位相关特征通常会阻止动态符号执行探索深度路径。在此基础上,我们提出了一种以程序相位特征为导向的符号执行技术。与最著名的符号执行方法KLEE相比,我们的方法能够覆盖更多的代码并发现更多的错误。我们设计并实现了pbSE系统,用于测试Linux系统中几种常用的工具和库。我们的结果表明,pbSE平均覆盖的代码是KLEE的两倍,我们通过使用pbSE发现了21个以前未知的漏洞,其中7个被分配了CVE id。
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