The progress, challenges, and perspectives of directed greybox fuzzing

Pengfei Wang, Xu Zhou, Tai Yue, Peihong Lin, Yingying Liu, Kai Lu
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Abstract

Greybox fuzzing is a scalable and practical approach for software testing. Most greybox fuzzing tools are coverage-guided as reaching high code coverage is more likely to find bugs. However, since most covered codes may not contain bugs, blindly extending code coverage is less efficient, especially for corner cases. Unlike coverage-guided greybox fuzzing which increases code coverage in an undirected manner, directed greybox fuzzing (DGF) spends most of its time allocation on reaching specific targets (e.g. the bug-prone zone) without wasting resources stressing unrelated parts. Thus, DGF is particularly suitable for scenarios such as patch testing, bug reproduction, and special bug detection. For now, DGF has become an active research area. However, DGF has general limitations and challenges that are worth further studying. Based on the investigation of 42 state-of-the-art fuzzers that are closely related to DGF, we conducted the first in-depth study to summarize the empirical evidence on the research progress of DGF. This paper studies DGF from a broader view, which takes into account not only the location-directed type that targets specific code parts but also the behavior-directed type that aims to expose abnormal program behaviors. By analyzing the benefits and limitations of DGF research, we try to identify gaps in current research, meanwhile, reveal new research opportunities and suggest areas for further investigation.

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定向灰盒模糊的进展、挑战和前景
灰盒模糊测试是一种可扩展的实用软件测试方法。大多数灰盒模糊工具都以覆盖率为导向,因为达到高代码覆盖率更有可能发现错误。然而,由于大多数被覆盖的代码可能并不包含错误,盲目扩大代码覆盖率的效率较低,尤其是对于边角情况。与以覆盖率为导向的灰盒模糊不同,定向灰盒模糊(DGF)是以不定向的方式提高代码覆盖率的,它将大部分时间分配用于达到特定目标(如错误易发区),而不会浪费资源强调无关部分。因此,DGF 特别适用于补丁测试、错误重现和特殊错误检测等场景。目前,DGF 已成为一个活跃的研究领域。然而,DGF 也存在普遍的局限性和挑战,值得进一步研究。基于对与 DGF 密切相关的 42 种最先进模糊器的调查,我们进行了首次深入研究,总结了有关 DGF 研究进展的实证证据。本文从更广阔的视角研究 DGF,不仅考虑了针对特定代码部分的位置定向类型,还考虑了旨在揭露异常程序行为的行为定向类型。通过分析 DGF 研究的优势和局限性,我们试图找出当前研究的不足,同时揭示新的研究机会,并提出进一步研究的领域。
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