CBSDI:基于索引表的跨架构二进制码相似度检测

Longmin Deng, Dongdong Zhao, Junwei Zhou, Zhe Xia, Jianwen Xiang
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引用次数: 0

摘要

跨平台二进制代码相似度检测广泛应用于抄袭检测、恶意软件检测和漏洞搜索等领域,旨在检测不同平台上的两个二进制函数是否相似。现有的跨架构方法主要依赖于图等复杂高维特征的近似匹配计算,速度慢,不适合大规模应用。为了解决这一问题,我们提出了一种基于索引表的CBSDI方法,通过在相似性检测之前筛选一批不匹配的函数来提高效率。我们选择了三个特性,并将它们跨体系结构进行比较,以选择最合适的特性来构建索引表,并且该表可以嵌入到其他工具中。评估结果表明,在错误较少的情况下,索引表可以将计算成本大致降低一半。此外,与文献中的相关工作相比,我们提出的方法不仅提高了效率,而且提高了准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CBSDI: Cross-Architecture Binary Code Similarity Detection based on Index Table
Binary code similarity detection for cross-platform is widely used in plagiarism detection, malware detection and vulnerability search, aiming to detect whether two binary functions over different platforms are similar. Existing cross-architecture approaches mainly rely on the approximate matching calculation of complex high-dimensional features, such as graph, which are inevitably slow and unsuitable for large-scale applications. To solve this problem, we propose a novel approach based on index table called CBSDI, improving efficiency by screening a batch of mismatched functions before similarity detection. We select three features and compare them across architectures to select the most appropriate one to construct the index table, and this table can be embedded in other tools. The evaluation shows that the index table can roughly cut the computational costs in half when there are few errors. Moreover, compared with the related works in the literature, our proposed approach can improve not only the efficiency but also the accuracy.
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