增强二进制克隆搜索对代码混淆和编译器优化的静态表示鲁棒性

Steven H. H. Ding, B. Fung, P. Charland
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引用次数: 251

摘要

逆向工程是一种人工密集型技术,但对于理解新恶意软件的内部工作原理、发现现有系统中的漏洞以及检测已发布软件中的专利侵权是必要的。装配克隆搜索引擎通过识别那些重复的或已知的部件,方便了逆向工程师的工作。然而,设计一个健壮的克隆搜索引擎是具有挑战性的,因为存在各种编译器优化选项和代码混淆技术,使得逻辑上相似的汇编函数看起来非常不同。一个实用的克隆搜索引擎依赖于汇编代码的鲁棒向量表示。然而,现有的克隆搜索方法依赖于手动特征工程过程来形成装配函数的特征向量,没有考虑特征之间的关系,也没有识别出那些可以统计区分装配函数的唯一模式。为了解决这个问题,我们提出了基于汇编代码的汇编函数的词法语义关系和向量表示的联合学习。我们开发了一个汇编代码表示学习模型\emph{Asm2Vec}。它只需要汇编代码作为输入,不需要任何先验知识,例如汇编函数之间的正确映射。它可以发现并合并汇编代码中出现的标记之间丰富的语义关系。我们进行了大量的实验,并使用最先进的静态和动态克隆搜索方法对学习模型进行基准测试。我们表明,学习到的表示更鲁棒,并且明显优于现有的方法,以防止混淆和优化引入的变化。
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Asm2Vec: Boosting Static Representation Robustness for Binary Clone Search against Code Obfuscation and Compiler Optimization
Reverse engineering is a manually intensive but necessary technique for understanding the inner workings of new malware, finding vulnerabilities in existing systems, and detecting patent infringements in released software. An assembly clone search engine facilitates the work of reverse engineers by identifying those duplicated or known parts. However, it is challenging to design a robust clone search engine, since there exist various compiler optimization options and code obfuscation techniques that make logically similar assembly functions appear to be very different. A practical clone search engine relies on a robust vector representation of assembly code. However, the existing clone search approaches, which rely on a manual feature engineering process to form a feature vector for an assembly function, fail to consider the relationships between features and identify those unique patterns that can statistically distinguish assembly functions. To address this problem, we propose to jointly learn the lexical semantic relationships and the vector representation of assembly functions based on assembly code. We have developed an assembly code representation learning model \emph{Asm2Vec}. It only needs assembly code as input and does not require any prior knowledge such as the correct mapping between assembly functions. It can find and incorporate rich semantic relationships among tokens appearing in assembly code. We conduct extensive experiments and benchmark the learning model with state-of-the-art static and dynamic clone search approaches. We show that the learned representation is more robust and significantly outperforms existing methods against changes introduced by obfuscation and optimizations.
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