组合xsing Web应用程序防火墙

Bernhard Garn, Daniel Sebastian Lang, Manuel Leithner, D. R. Kuhn, R. Kacker, D. Simos
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引用次数: 2

摘要

跨站点脚本(XSS)是web应用程序领域中常见的一类漏洞。尽管从业人员和研究人员不断努力,但它仍然普遍存在,站点运营商经常寻求使用web应用程序防火墙(waf)来保护他们的资产。这些系统采用过滤机制来拦截和拒绝可能适合利用XSS缺陷和相关漏洞(如SQL注入)的请求。然而,它们通常不提供完整的保护,并且经常可以被专门设计的漏洞绕过。在这项工作中,我们评估了waf检测XSS漏洞的有效性。我们开发了一种攻击语法,并使用组合测试方法来生成攻击向量。我们将我们的载体与传统的对口物及其绕过不同waf的能力进行比较。我们的结果表明,用组合测试生成的向量在几乎所有情况下都具有相同或更好的性能。他们进一步确认,在这项工作中评估的大多数规则集可以被这些精心制作的输入中的至少一个绕过。
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Combinatorially XSSing Web Application Firewalls
Cross-Site scripting (XSS) is a common class of vulnerabilities in the domain of web applications. As it re-mains prevalent despite continued efforts by practitioners and researchers, site operators often seek to protect their assets using web application firewalls (WAFs). These systems employ filtering mechanisms to intercept and reject requests that may be suitable to exploit XSS flaws and related vulnerabilities such as SQL injections. However, they generally do not offer complete protection and can often be bypassed using specifically crafted exploits. In this work, we evaluate the effectiveness of WAFs to detect XSS exploits. We develop an attack grammar and use a combinatorial testing approach to generate attack vectors. We compare our vectors with conventional counterparts and their ability to bypass different WAFs. Our results show that the vectors generated with combinatorial testing perform equal or better in almost all cases. They further confirm that most of the rule sets evaluated in this work can be bypassed by at least one of these crafted inputs.
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