Scalability, fidelity and stealth in the DRAKVUF dynamic malware analysis system

Tamas K. Lengyel, S. Maresca, B. Payne, George D. Webster, S. Vogl, A. Kiayias
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引用次数: 172

Abstract

Malware is one of the biggest security threats on the Internet today and deploying effective defensive solutions requires the rapid analysis of a continuously increasing number of malware samples. With the proliferation of metamorphic malware the analysis is further complicated as the efficacy of signature-based static analysis systems is greatly reduced. While dynamic malware analysis is an effective alternative, the approach faces significant challenges as the ever increasing number of samples requiring analysis places a burden on hardware resources. At the same time modern malware can both detect the monitoring environment and hide in unmonitored corners of the system. In this paper we present DRAKVUF, a novel dynamic malware analysis system designed to address these challenges by building on the latest hardware virtualization extensions and the Xen hypervisor. We present a technique for improving stealth by initiating the execution of malware samples without leaving any trace in the analysis machine. We also present novel techniques to eliminate blind-spots created by kernel-mode rootkits by extending the scope of monitoring to include kernel internal functions, and to monitor file-system accesses through the kernel's heap allocations. With extensive tests performed on recent malware samples we show that DRAKVUF achieves significant improvements in conserving hardware resources while providing a stealthy, in-depth view into the behavior of modern malware.
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DRAKVUF动态恶意软件分析系统的可扩展性、保真性和隐蔽性
恶意软件是当今互联网上最大的安全威胁之一,部署有效的防御解决方案需要对不断增加的恶意软件样本进行快速分析。随着变形恶意软件的泛滥,基于签名的静态分析系统的有效性大大降低,使分析变得更加复杂。虽然动态恶意软件分析是一种有效的替代方法,但由于需要分析的样本数量不断增加,给硬件资源带来了负担,因此该方法面临着重大挑战。同时,现代恶意软件既可以检测到监控环境,也可以隐藏在系统中不受监控的角落。在本文中,我们提出了DRAKVUF,一种新的动态恶意软件分析系统,旨在通过构建最新的硬件虚拟化扩展和Xen管理程序来解决这些挑战。我们提出了一种通过启动恶意软件样本的执行而不在分析机中留下任何痕迹来提高隐身性的技术。我们还提出了一些新技术,通过扩展监视范围以包括内核内部函数,并通过内核的堆分配监视文件系统访问,从而消除内核模式rootkit造成的盲点。通过对最近的恶意软件样本进行广泛的测试,我们表明DRAKVUF在节省硬件资源方面取得了显着改进,同时提供了对现代恶意软件行为的隐形,深入的看法。
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