Host Identification via USB Fingerprinting

Lara Letaw, Joe Pletcher, Kevin R. B. Butler
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引用次数: 23

Abstract

Determining a computer's identity is a challenge of critical importance to a forensics investigator. However, relay and impersonation attacks can defeat even computers that contain trusted computing hardware. In this paper, we consider how to leverage the virtually ubiquitous USB interface to uniquely identify computers based on the characteristics of their hardware, firmware, and software USB stacks. We use a USB protocol analyzer to collect data on 24 machines connected to a range of different USB devices, and demonstrate through machine learning classification techniques that we can differentiate not only between operating systems, but between seemingly unnoticeable differences in machine model types as well. We also show that we can differentiate between real and virtualized hosts responding to USB stimuli, and point to new ways of recognizing remote attacks. These results are a first step in showing that USB is a novel and effective means of identifying machines, and a valuable tool in the arsenal of a forensics kit.
主机识别通过USB指纹
确定计算机的身份对法医调查员来说是一项至关重要的挑战。然而,中继和模拟攻击甚至可以击败包含可信计算硬件的计算机。在本文中,我们考虑如何利用几乎无处不在的USB接口来根据其硬件、固件和软件USB堆栈的特征唯一地识别计算机。我们使用USB协议分析器收集连接到一系列不同USB设备的24台机器上的数据,并通过机器学习分类技术演示,我们不仅可以区分操作系统,还可以区分机器模型类型中看似不明显的差异。我们还表明,我们可以区分真实和虚拟主机响应USB刺激,并指出识别远程攻击的新方法。这些结果是第一步,表明USB是一种新颖而有效的识别机器的手段,也是法医工具箱中一个有价值的工具。
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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