自动生成缓冲区溢出攻击签名:一种基于程序行为模型的方法

Zhenkai Liang, R. Sekar
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引用次数: 50

摘要

缓冲区溢出已经成为基于网络的攻击最常见的目标。它们也是蠕虫和其他形式的自动攻击所使用的主要机制。尽管已经开发了许多技术来防止由于缓冲区溢出而危及服务器,但这些防御仍然会导致服务器崩溃。当攻击重复发生时(自动攻击很常见),这些保护机制会导致受害应用程序反复重启,使其服务不可用。为了克服这个问题,我们开发了一种新的方法,可以学习特定攻击的特征,并过滤掉相同攻击或其变体的未来实例。通过这样做,我们的方法显著提高了遭受重复攻击的服务器的可用性。这种方法是全自动的,不需要源代码,运行时开销也很低。在我们的实验中,它对大多数攻击都有效,并且没有产生任何误报
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Automatic generation of buffer overflow attack signatures: an approach based on program behavior models
Buffer overflows have become the most common target for network-based attacks. They are also the primary mechanism used by worms and other forms of automated attacks. Although many techniques have been developed to prevent server compromises due to buffer overflows, these defenses still lead to server crashes. When attacks occur repeatedly, as is common with automated attacks, these protection mechanisms lead to repeated restarts of the victim application, rendering its service unavailable. To overcome this problem, we develop a new approach that can learn the characteristics of a particular attack, and filter out future instances of the same attack or its variants. By doing so, our approach significantly increases the availability of servers subjected to repeated attacks. The approach is fully automatic, does not require source code, and has low runtime overheads. In our experiments, it was effective against most attacks, and did not produce any false positives
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