CRFeb 17, 2016

Geo-spatial Location Spoofing Detection for Internet of Things

arXiv:1602.05335v242 citations
Originality Incremental advance
AI Analysis

This addresses security for IoT location-based services, but it is incremental as it builds on statistical decision theory with added audibility.

The paper tackles location spoofing detection in IoT by proposing ELSA, a new algorithm that uses two-way time-of-arrival and audibility information, achieving superior detection and false alarm rates compared to existing methods.

We develop a new location spoofing detection algorithm for geo-spatial tagging and location-based services in the Internet of Things (IoT), called Enhanced Location Spoofing Detection using Audibility (ELSA) which can be implemented at the backend server without modifying existing legacy IoT systems. ELSA is based on a statistical decision theory framework and uses two-way time-of-arrival (TW-TOA) information between the user's device and the anchors. In addition to the TW-TOA information, ELSA exploits the implicit available audibility information to improve detection rates of location spoofing attacks. Given TW-TOA and audibility information, we derive the decision rule for the verification of the device's location, based on the generalized likelihood ratio test. We develop a practical threat model for delay measurements spoofing scenarios, and investigate in detail the performance of ELSA in terms of detection and false alarm rates. Our extensive simulation results on both synthetic and real-world datasets demonstrate the superior performance of ELSA compared to conventional non-audibility-aware approaches.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes