Black Widow: Blackbox Data-driven Web Scanning

Benjamin Eriksson, Giancarlo Pellegrino, A. Sabelfeld
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引用次数: 23

Abstract

Modern web applications are an integral part of our digital lives. As we put more trust in web applications, the need for security increases. At the same time, detecting vulnerabilities in web applications has become increasingly hard, due to the complexity, dynamism, and reliance on third-party components. Blackbox vulnerability scanning is especially challenging because (i) for deep penetration of web applications scanners need to exercise such browsing behavior as user interaction and asynchrony, and (ii) for detection of nontrivial injection attacks, such as stored cross-site scripting (XSS), scanners need to discover inter-page data dependencies.This paper illuminates key challenges for crawling and scanning the modern web. Based on these challenges we identify three core pillars for deep crawling and scanning: navigation modeling, traversing, and tracking inter-state dependencies. While prior efforts are largely limited to the separate pillars, we suggest an approach that leverages all three. We develop Black Widow, a blackbox data-driven approach to web crawling and scanning. We demonstrate the effectiveness of the crawling by code coverage improvements ranging from 63% to 280% compared to other crawlers across all applications. Further, we demonstrate the effectiveness of the web vulnerability scanning by featuring no false positives and finding more cross-site scripting vulnerabilities than previous methods. In older applications, used in previous research, we find vulnerabilities that the other methods miss. We also find new vulnerabili-ties in production software, including HotCRP, osCommerce, PrestaShop and WordPress.
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黑寡妇:黑盒子数据驱动的网页扫描
现代网络应用程序是我们数字生活中不可或缺的一部分。随着我们对web应用程序的信任越来越多,对安全性的需求也在增加。同时,由于web应用程序的复杂性、动态性和对第三方组件的依赖性,检测web应用程序中的漏洞变得越来越困难。黑盒漏洞扫描尤其具有挑战性,因为(i)为了深入渗透web应用程序,扫描仪需要检测用户交互和异步等浏览行为,以及(ii)为了检测重要的注入攻击,例如存储跨站点脚本(XSS),扫描仪需要发现页面间的数据依赖关系。本文阐明了爬行和扫描现代网络的主要挑战。基于这些挑战,我们确定了深度爬行和扫描的三个核心支柱:导航建模、遍历和跟踪状态间依赖关系。虽然先前的努力主要局限于单独的支柱,但我们建议采用一种利用所有三个支柱的方法。我们开发了黑寡妇,一个黑箱数据驱动的方法来网络爬行和扫描。与所有应用程序中的其他爬虫相比,我们通过代码覆盖率改进来证明爬行的有效性,从63%到280%不等。此外,我们通过无误报和发现比以前的方法更多的跨站点脚本漏洞来证明web漏洞扫描的有效性。在之前的研究中使用的旧应用程序中,我们发现了其他方法没有发现的漏洞。我们还在生产软件中发现了新的漏洞,包括HotCRP、osCommerce、PrestaShop和WordPress。
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