最小暴露的危险:通过多侧渠道学习了解 iOS 上的跨应用程序信息泄露。

Zihao Wang, Jiale Guan, XiaoFeng Wang, Wenhao Wang, Luyi Xing, Fares Alharbi
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引用次数: 0

摘要

长期以来,有关侧信道泄漏的研究主要集中在单一信道(内存、网络流量、电源等)的信息暴露上。研究较少的是与目标活动(如网站访问)相关的多个侧信道的学习风险,即使单个信道的信息量不足以进行有效攻击。虽然先前的研究在这个方向上迈出了第一步,即从一组全局统计数据中推断出 iOS 上前台应用程序的操作,但如何确定系统上所有与目标相关的侧信道的最大信息泄露量、从这些泄露中可以了解到目标的哪些信息,以及最重要的是如何控制来自整个系统的信息泄露,而不仅仅是来自单个信道的信息泄露,这些问题仍然不太清楚。为了回答这些基本问题,我们首次对多通道推理进行了系统性研究,并将 iOS 作为研究的第一步。我们的研究基于一种名为 "恶作剧"(Mischief)的新型攻击技术,该技术给定了一组与目标活动(如前台应用程序)相关的潜在侧信道,利用概率搜索来近似确定暴露信息最多的信道的最佳子集,该子集由基于相关性特征选择的指标 "优点分数"(Merit Score)来衡量。在这样一个最优子集上,推理攻击被建模为一个多变量时间序列分类问题,因此基于深度学习的最先进解决方案,特别是 InceptionTime,可以应用于实现最佳结果。研究发现,"恶作剧 "能在当今的 iOS 系统(16.2)上有效工作,即使在开放世界场景中,也能以较高的置信度识别前台应用程序、网站访问、敏感的物联网操作(如开门),这表明苹果公司针对已知攻击所采取的保护措施并不充分。同样重要的是,这种新的认识使我们能够开发出更全面的保护措施,从而将当今的侧信道研究从抑制单个信道的泄漏提升到控制整个系统的信息暴露。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Danger of Minimum Exposures: Understanding Cross-App Information Leaks on iOS through Multi-Side-Channel Learning.

Research on side-channel leaks has long been focusing on the information exposure from a single channel (memory, network traffic, power, etc.). Less studied is the risk of learning from multiple side channels related to a target activity (e.g., website visits) even when individual channels are not informative enough for an effective attack. Although the prior research made the first step on this direction, inferring the operations of foreground apps on iOS from a set of global statistics, still less clear are how to determine the maximum information leaks from all target-related side channels on a system, what can be learnt about the target from such leaks and most importantly, how to control information leaks from the whole system, not just from an individual channel. To answer these fundamental questions, we performed the first systematic study on multi-channel inference, focusing on iOS as the first step. Our research is based upon a novel attack technique, called Mischief, which given a set of potential side channels related to a target activity (e.g., foreground apps), utilizes probabilistic search to approximate an optimal subset of the channels exposing most information, as measured by Merit Score, a metric for correlation-based feature selection. On such an optimal subset, an inference attack is modeled as a multivariate time series classification problem, so the state-of-the-art deep-learning based solution, InceptionTime in particular, can be applied to achieve the best possible outcome. Mischief is found to work effectively on today's iOS (16.2), identifying foreground apps, website visits, sensitive IoT operations (e.g., opening the door) with a high confidence, even in an open-world scenario, which demonstrates that the protection Apple puts in place against the known attack is inadequate. Also importantly, this new understanding enables us to develop more comprehensive protection, which could elevate today's side-channel research from suppressing leaks from individual channels to controlling information exposure across the whole system.

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