模糊测试:路线图调查

Xiaogang Zhu, Sheng Wen, S. Çamtepe, Yang Xiang
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引用次数: 68

摘要

最近,模糊测试(fuzzing)在检测安全漏洞方面得到了广泛的应用。它生成大量的测试用例,并监视缺陷的执行。模糊测试已经在各种应用程序中检测到数千个bug和漏洞。虽然是有效的,但缺乏对模糊所面临的差距的系统分析。模糊作为一种缺陷检测技术,需要缩小整个输入空间和缺陷空间之间的差距。不受生成输入的限制,输入空间是无限的。然而,缺陷在应用程序中是稀疏的,这表明缺陷空间比整个输入空间要小得多。此外,由于模糊测试会生成大量的测试用例来重复检查目标,因此需要以自动的方式执行模糊测试。由于应用程序的复杂性和缺陷,自动化各种应用程序的执行是一项挑战。在本文中,我们系统地回顾和分析了这些差距及其解决方案,考虑了广度和深度。这项调查可以作为初学者和高级开发人员更好地理解模糊测试的路线图。
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Fuzzing: A Survey for Roadmap
Fuzz testing (fuzzing) has witnessed its prosperity in detecting security flaws recently. It generates a large number of test cases and monitors the executions for defects. Fuzzing has detected thousands of bugs and vulnerabilities in various applications. Although effective, there lacks systematic analysis of gaps faced by fuzzing. As a technique of defect detection, fuzzing is required to narrow down the gaps between the entire input space and the defect space. Without limitation on the generated inputs, the input space is infinite. However, defects are sparse in an application, which indicates that the defect space is much smaller than the entire input space. Besides, because fuzzing generates numerous test cases to repeatedly examine targets, it requires fuzzing to perform in an automatic manner. Due to the complexity of applications and defects, it is challenging to automatize the execution of diverse applications. In this article, we systematically review and analyze the gaps as well as their solutions, considering both breadth and depth. This survey can be a roadmap for both beginners and advanced developers to better understand fuzzing.
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