SenseMag: Enabling Low-Cost Traffic Monitoring using Non-invasive Magnetic Sensing
Kafeng Wang, Haoyi Xiong, Jie Zhang, Hongyang Chen, Dejing, Dou, Cheng-Zhong Xu

TL;DR
SenseMag is a low-cost, non-invasive magnetic sensing system that accurately classifies vehicle types in real-time, outperforming existing methods in accuracy and granularity, suitable for intelligent transportation systems.
Contribution
This paper introduces SenseMag, a novel magnetic sensing approach for vehicle classification that is low-cost, non-invasive, and achieves high accuracy with detailed vehicle type granularity.
Findings
Achieves over 90% classification accuracy.
Classifies 7 vehicle types, outperforming 4-type methods.
Less than 5% vehicle length classification error.
Abstract
The operation and management of intelligent transportation systems (ITS), such as traffic monitoring, relies on real-time data aggregation of vehicular traffic information, including vehicular types (e.g., cars, trucks, and buses), in the critical roads and highways. While traditional approaches based on vehicular-embedded GPS sensors or camera networks would either invade drivers' privacy or require high deployment cost, this paper introduces a low-cost method, namely SenseMag, to recognize the vehicular type using a pair of non-invasive magnetic sensors deployed on the straight road section. SenseMag filters out noises and segments received magnetic signals by the exact time points that the vehicle arrives or departs from every sensor node. Further, SenseMag adopts a hierarchical recognition model to first estimate the speed/velocity, then identify the length of vehicle using the…
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