Revealing hidden IoT devices through passive detection, fingerprinting, and localization

Loading...
Thumbnail Image
Authors
Sun, Wei
Givehchian, Hadi
Bharadia, Dinesh
Advisors
Issue Date
2025
Type
Article
Keywords
Concealed IoT Devices , Detection , Localization , Fingerprinting , Privacy Enhancement , Wireless Sensing
Research Projects
Organizational Units
Journal Issue
Citation
Sun, W., Givehchian, H., & Bharadia, D. (2025). Revealing Hidden IoT Devices through Passive Detection, Fingerprinting, and Localization. Proceedings on Privacy Enhancing Technologies, 2025(1), 184-197. https://doi.org/10.56553/popets-2025-0011
Abstract

Internet-of-things (IoT) devices (e.g., micro camera and microphone) are usually small form factor, low-cost, and low-power, which makes them easy to conceal and deploy in the indoor environment to spy on people for human private information such as location and indoor activities. As a result, these IoT devices introduce a great privacy and ethical threat. Therefore, it is important to reveal these concealed IoT devices in the indoor environment for human privacy protection.

This paper presents RFScan 1, a system that can passively detect, fingerprint, and localize diverse concealed IoT devices in the indoor environment by sensing their unintentional electromagnetic emanations. However, sensing these emanations is challenging due to the weak emanation strength and the interference from the ambient wireless communication signals. To this end, we boost the emanation strength through the non-coherent averaging based on the emanation signal’s characteristics and design a novel suppression algorithm to mitigate interference from the wireless communication signals. We further profile emanations across frequency and time that act as the emanation source’s unique signature and customize a deep neural network architecture to fingerprint the emanation sources. Furthermore, we can localize the emanation source with an angle-of-arrival (AoA) based triangulation approach. Our experimental results demonstrate the efficiency of the IoT devices’ detection, fingerprinting, and localization across different indoor environments.

Table of Contents
Description
Publisher
Privacy Enhancing Technologies Symposium
Journal
Proceedings on Privacy Enhancing Technologies
Book Title
Series
PubMed ID
ISSN
2299-0984
EISSN