GNSS Spoofing Detection Based on Opportunistic Position Information
Wenjie Liu, Panos Papadimitratos

TL;DR
This paper presents PADS, a probabilistic framework combining opportunistic position data and inertial sensors to detect GNSS spoofing attacks on smartphones, significantly improving detection accuracy over existing methods.
Contribution
Introduces PADS, a novel probabilistic detection scheme that fuses network-based and inertial sensor data for robust GNSS spoofing detection on consumer devices.
Findings
PADS achieves up to 3 times higher true positive rate than baseline methods.
The framework effectively combines uncertainty analysis with position estimation.
Detection performance is validated on consumer-grade smartphones.
Abstract
The limited or no protection for civilian Global Navigation Satellite System (GNSS) signals makes spoofing attacks relatively easy. With modern mobile devices often featuring network interfaces, state-of-the-art signals of opportunity (SOP) schemes can provide accurate network positions in replacement of GNSS. The use of onboard inertial sensors can also assist in the absence of GNSS, possibly in the presence of jammers. The combination of SOP and inertial sensors has received limited attention, yet it shows strong results on fully custom-built platforms. We do not seek to improve such special-purpose schemes. Rather, we focus on countering GNSS attacks, notably detecting them, with emphasis on deployment with consumer-grade platforms, notably smartphones, that provide off-the-shelf opportunistic information (i.e., network position and inertial sensor data). Our Position-based Attack…
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Taxonomy
TopicsGNSS positioning and interference · Indoor and Outdoor Localization Technologies · Inertial Sensor and Navigation
