Litcius/Paper detail

Moat: Adaptive Inside/Outside Detection System for Smart Homes

Chixiang Wang, Weijia He, Timothy J. Pierson, David Kotz

2024Proceedings of the ACM on Interactive Mobile Wearable and Ubiquitous Technologies23 citationsDOIOpen Access PDF

Abstract

Smart-home technology is now pervasive, demanding increased attention to the security of the devices and the privacy of the home's residents. To assist residents in making security and privacy decisions - e.g., whether to allow a new device to connect to the network, or whether to be alarmed when an unknown device is discovered - it helps to know whether the device is inside the home, or outside. In this paper we present MOAT, a system that leverages Wi-Fi sniffers to analyze the physical properties of a device's wireless transmissions to infer whether that device is located inside or outside of a home. MOAT can adaptively self-update to accommodate changes in the home indoor environment to ensure robust long-term performance. Notably, MOAT does not require prior knowledge of the home's layout or cooperation from target devices, and is easy to install and configure. We evaluated MOAT in four different homes with 21 diverse commercial smart devices and achieved an overall balanced accuracy rate of up to 95.6%. Our novel periodic adaptation technique allowed our approach to maintain high accuracy even after rearranging furniture in the home. MOAT is a practical and efficient first step for monitoring and managing devices in a smart home.

Topics & Concepts

Computer scienceComputer securityIoT-based Smart Home SystemsContext-Aware Activity Recognition SystemsIndoor and Outdoor Localization Technologies
Moat: Adaptive Inside/Outside Detection System for Smart Homes | Litcius