论文标题
攻击和捍卫基于深度学习的offevice无线定位系统
Attacking and Defending Deep-Learning-Based Off-Device Wireless Positioning Systems
论文作者
论文摘要
无线设备的本地化服务在我们的日常生活中起着越来越重要的作用,并且已经依赖精确的位置信息,多种新兴服务和应用程序已经依靠。广泛使用的设备定位方法(例如全球定位系统)启用准确的室外定位,并为用户提供对允许哪些服务和应用程序访问其位置信息的完全控制。为了在没有视线卫星连接性的情况下,在室内或混乱的城市场景中提供准确的定位,最近出现了在基础架构基站或具有深层神经网络访问点的处理通道状态信息(CSI)的功能强大的偏置定位系统。由于可靠的无线通信是必需的,因此,这种偏离设备无线定位系统固有地将用户的数据传输与其本地化联系起来,这不仅阻止用户控制谁可以访问此信息,而且还可以使设备范围内的每个人都可以估算其位置,从而导致严重的隐私和安全问题。因此,我们提出了针对多个Antenna正交频部分割多路复用系统中偏离偏离无线定位系统的设备攻击,同时又保持符合标准的标准,并最大程度地降低了对服务质量的影响,我们使用现实世界中测量的数据集证明了它们的功效,用于蜂窝室外和无线室内室内场景。我们还调查了抵制这种攻击机制的防御措施,并讨论了保护现有和未来无线通信系统中的位置隐私的局限性和含义。
Localization services for wireless devices play an increasingly important role in our daily lives and a plethora of emerging services and applications already rely on precise position information. Widely used on-device positioning methods, such as the global positioning system, enable accurate outdoor positioning and provide the users with full control over what services and applications are allowed to access their location information. In order to provide accurate positioning indoors or in cluttered urban scenarios without line-of-sight satellite connectivity, powerful off-device positioning systems, which process channel state information (CSI) measured at the infrastructure base stations or access points with deep neural networks, have emerged recently. Such off-device wireless positioning systems inherently link a user's data transmission with its localization, since accurate CSI measurements are necessary for reliable wireless communication -- this not only prevents the users from controlling who can access this information but also enables virtually everyone in the device's range to estimate its location, resulting in serious privacy and security concerns. We therefore propose on-device attacks against off-device wireless positioning systems in multi-antenna orthogonal frequency-division multiplexing systems while remaining standard compliant and minimizing the impact on quality-of-service, and we demonstrate their efficacy using real-world measured datasets for cellular outdoor and wireless LAN indoor scenarios. We also investigate defenses to counter such attack mechanisms, and we discuss the limitations and implications on protecting location privacy in existing and future wireless communication systems.