Fast Discovery of VM-Sensitive Divergence Points with Basic Block Comparison

Yen Ju Liu, Chong Kuan Chen, Michael Cheng Yi Cho, S. Shieh
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Abstract

To evade VM-based malware analysis systems, VM-aware malware equipped with the ability to detect the presence of virtual machine has appeared. To cope with the problem, detecting VM-aware malware and locating VM-sensitive divergence points of VM-aware malware is in urgent need. In this paper, we propose a novel block-based divergence locator. In contrast to the conventional instruction-based schemes, the block-based divergence locator divides malware program into basic blocks, instead of binary instructions, and uses them as the analysis unit. The block-based divergence locator significantly decrease the cost of behavior logging and trace comparison, as well as the size of behavior traces. As the evaluation showed, behavior logging is 23.87-39.49 times faster than the conventional schemes. The total number of analysis unit, which is highly related to the cost of trace comparisons, is 11.95%-16.00% of the conventional schemes. Consequently, VM-sensitive divergence points can be discovered more efficiently. The correctness of our divergence point discovery algorithm is also proved formally in this paper.
基于基本块比较的vm敏感发散点快速发现
为了规避基于虚拟机的恶意软件分析系统,虚拟机感知恶意软件配备了检测虚拟机存在的能力。为了解决这一问题,迫切需要检测感知虚拟机的恶意软件,并找到感知虚拟机的恶意软件对虚拟机敏感的发散点。本文提出了一种新的基于分块的发散定位器。与传统的基于指令的方案相比,基于块的发散定位器将恶意程序划分为基本块,而不是二进制指令,并将其作为分析单元。基于块的发散定位器显著降低了行为记录和跟踪比较的成本,以及行为跟踪的大小。评价结果表明,行为记录的速度是常规方案的23.87 ~ 39.49倍。分析单元总数为常规方案的11.95% ~ 16.00%,与痕量比较费用密切相关。因此,可以更有效地发现vm敏感的发散点。本文还正式证明了发散点发现算法的正确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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