用于黑盒XSS检测的控制和数据流模型的逆向工程

F. Duchene, Sanjay Rawat, J. Richier, Roland Groz
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引用次数: 24

摘要

模糊测试包括自动生成和发送恶意输入到应用程序,以便触发漏洞。为了提高效率,模糊测试应该回答以下问题:向哪里发送恶意值?在哪里观察它的效果?在这种状态下如何定位系统?回答这些问题需要对应用程序有足够的理解。逆向工程是获得这种知识的一种可能的方法,特别是在黑盒控制中。事实上,考虑到现代web应用程序的复杂性,自动黑盒扫描程序可以对web应用程序进行逆向工程和模糊处理,以检测漏洞。我们提出了一种称为LigRE的方法,它改进了逆向工程来指导模糊测试。我们采用了一种自动学习web应用程序控制流模型的方法,并用推断的数据流对该模型进行注释。然后,我们生成用于指导模糊器范围的模型切片。经验实验表明,LigRE提高了跨站脚本(XSS)的检测能力,这是web命令注入漏洞的一个特殊案例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LigRE: Reverse-engineering of control and data flow models for black-box XSS detection
Fuzz testing consists of automatically generating and sending malicious inputs to an application in order to hopefully trigger a vulnerability. In order to be efficient, the fuzzing should answer questions such as: Where to send a malicious value? Where to observe its effects? How to position the system in such states? Answering such questions is a matter of understanding precisely enough the application. Reverseengineering is a possible way to gain this knowledge, especially in a black-box harness. In fact, given the complexity of modern web applications, automated black-box scanners alternatively reverse-engineer and fuzz web applications to detect vulnerabilities. We present an approach, named as LigRE, which improves the reverse engineering to guide the fuzzing. We adapt a method to automatically learn a control flow model of web applications, and annotate this model with inferred data flows. Afterwards, we generate slices of the model for guiding the scope of a fuzzer. Empirical experiments show that LigRE increases detection capabilities of Cross Site Scripting (XSS), a particular case of web command injection vulnerabilities.
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