Qian Feng, Aravind Prakash, Heng Yin, Zhiqiang Lin
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引用次数: 25
摘要
内存取证分析从实时系统的内存中收集数字犯罪和恶意软件攻击的证据。它越来越有价值,尤其是在云计算领域。然而,对商品操作系统(如Microsoft Windows)的内存分析面临以下主要挑战:(1)内核数据结构的部分知识;(2)歧义指针处理困难;(3)依赖于容易被内核攻击破坏的软约束,缺乏鲁棒性。为了应对这些挑战,我们提出了MACE,这是一个内存分析系统,它可以为闭源操作系统提取更完整的内核数据结构视图,并通过仅利用指针约束(难以操作)和全局评估这些约束(甚至容忍一定数量的指针攻击)来显着提高鲁棒性。我们在Windows XP SP3和Windows 7 SP0的100个内存映像上评估了MACE。总的来说,MACE可以在几分钟内从内存图像构建内核对象图,并且达到95%以上的召回率和96%以上的精度。我们对真实世界的rootkit样本和合成攻击的实验进一步证明,MACE在更广泛的覆盖范围和更好的鲁棒性方面优于其他外部内存分析工具。
MACE: high-coverage and robust memory analysis for commodity operating systems
Memory forensic analysis collects evidence for digital crimes and malware attacks from the memory of a live system. It is increasingly valuable, especially in cloud computing. However, memory analysis on on commodity operating systems (such as Microsoft Windows) faces the following key challenges: (1) a partial knowledge of kernel data structures; (2) difficulty in handling ambiguous pointers; and (3) lack of robustness by relying on soft constraints that can be easily violated by kernel attacks. To address these challenges, we present MACE, a memory analysis system that can extract a more complete view of the kernel data structures for closed-source operating systems and significantly improve the robustness by only leveraging pointer constraints (which are hard to manipulate) and evaluating these constraint globally (to even tolerate certain amount of pointer attacks). We have evaluated MACE on 100 memory images for Windows XP SP3 and Windows 7 SP0. Overall, MACE can construct a kernel object graph from a memory image in just a few minutes, and achieves over 95% recall and over 96% precision. Our experiments on real-world rootkit samples and synthetic attacks further demonstrate that MACE outperforms other external memory analysis tools with respect to wider coverage and better robustness.