Magnifier: Detecting Network Access via Lightweight Traffic-based Fingerprints
Wenhao Li, Qiang Wang, Huaifeng Bao, Xiao-Yu Zhang, Lingyun Ying and, Zhaoxuan Li

TL;DR
Magnifier is a novel passive method that detects mobile device network access by analyzing backbone traffic patterns, using device-specific fingerprints, achieving high coverage without requiring device software installation.
Contribution
This work introduces Magnifier, the first passive backbone traffic-based system for mobile device access detection, utilizing device-specific fingerprints and a two-stage distillation algorithm.
Findings
High accuracy in real-world scenarios
Exceptional universality and coverage
Real-time detection capability
Abstract
Network access detection plays a crucial role in global network management, enabling efficient network monitoring and topology measurement by identifying unauthorized network access and gathering detailed information about mobile devices. Existing methods for endpoint-based detection primarily rely on deploying monitoring software to recognize network connections. However, the challenges associated with developing and maintaining such systems have limited their universality and coverage in practical deployments, especially given the cost implications of covering a wide array of devices with heterogeneous operating systems. To tackle the issues, we propose Magnifier for mobile device network access detection that, for the first time, passively infers access patterns from backbone traffic at the gateway level. Magnifier's foundation is the creation of device-specific access patterns using…
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Taxonomy
TopicsInternet Traffic Analysis and Secure E-voting · Network Security and Intrusion Detection · Wireless Signal Modulation Classification
