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HERO: A novel malware detection framework based on binary translation

机译:HERO:一种基于二进制翻译的新型恶意软件检测框架

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Malware has become one of the most serious threats to computer information system. In this paper, we describe HERO (Hybrid security extension of binary translation), a novel framework that exploits static and dynamic binary translation features to detect broad spectrum malware and prevent its execution. By operating directly on binary code without any assumption on the availability of source code, HERO is appropriate for translating low-level binary code to high-level proper representation, obtaining CFG (Control Flow Graph) and other high-level Control Structure by static binary translation-based analyzer. Then Critical API Graph based on CFG is generated to do sub-graph matching with the defined Malware Behavior Template. If static analysis cannot finish generating CFG because of code obfuscation used in malware, the dynamic binary translation based analyzer in HERO is called to undertake the process to take on the remaining code analysis. Compared with other detection approaches, HERO is found to be very efficient in terms of detection capability and false alarm rate.
机译:恶意软件已成为对计算机信息系统的最严重威胁之一。在本文中,我们描述了HERO(二进制翻译的混合安全扩展),这是一个利用静态和动态二进制翻译功能来检测广谱恶意软件并阻止其执行的新颖框架。通过直接在二进制代码上进行操作而无需任何源代码可用性的假设,HERO适用于将低级二进制代码转换为高级适当的表示形式,并通过静态二进制获得CFG(控制流图)和其他高级控制结构基于翻译的分析器。然后生成基于CFG的关键API图,以与定义的恶意软件行为模板进行子图匹配。如果由于恶意软件中使用的代码混淆而导致静态分析无法完成CFG的生成,则将调用HERO中基于动态二进制翻译的分析器来进行其余代码分析的过程。与其他检测方法相比,HERO在检测能力和误报率方面非常有效。

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