Towards Inferring Mechanical Lock Combinations using Wrist-Wearables as a Side-Channel

Anindya Maiti, R. Heard, Mohd Sabra, Murtuza Jadliwala
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引用次数: 17

Abstract

Wrist-wearables such as smartwatches and fitness bands are equipped with a variety of high-precision sensors that support novel contextual and activity-based applications. The presence of a diverse set of on-board sensors, however, also expose an additional attack surface which, if not adequately protected, could be potentially exploited to leak private user information. In this paper, we investigate the feasibility of a new attack that takes advantage of a wrist-wearable's motion sensors to infer input on mechanical devices typically used to secure physical access, for example, combination locks. We outline an inference framework that attempts to infer a lock's unlock combination from the wrist motion captured by a smartwatch's gyroscope sensor, and uses a probabilistic model to produce a ranked list of likely unlock combinations. We conduct a thorough empirical evaluation of the proposed framework by employing unlocking-related motion data collected from human subject participants in a variety of controlled and realistic settings. Evaluation results from these experiments demonstrate that motion data from wrist-wearables can be effectively employed as a side-channel to significantly reduce the unlock combination search-space of commonly found combination locks, thus compromising the physical security provided by these locks.
使用手腕可穿戴设备作为侧通道来推断机械锁组合
智能手表和健身手环等可穿戴设备配备了各种高精度传感器,支持新颖的上下文和基于活动的应用程序。然而,各种机载传感器的存在也暴露了一个额外的攻击面,如果保护不充分,可能会被利用来泄露私人用户信息。在本文中,我们研究了一种新攻击的可行性,该攻击利用手腕可穿戴设备的运动传感器来推断通常用于保护物理访问的机械设备的输入,例如密码锁。我们概述了一个推理框架,该框架试图从智能手表陀螺仪传感器捕获的手腕动作推断锁的解锁组合,并使用概率模型生成可能解锁组合的排名列表。我们通过在各种受控和现实环境中从人类受试者参与者收集的解锁相关运动数据,对所提出的框架进行了彻底的实证评估。这些实验的评估结果表明,来自腕带可穿戴设备的运动数据可以有效地用作侧信道,从而显着减少常见密码锁的解锁组合搜索空间,从而降低密码锁提供的物理安全性。
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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