GLAC: High-Precision Tracking of Mobile Objects With COTS RFID Systems

Wei Gong, Haoyu Wang, Siyi Li, Si Chen

Published: 01 Jan 2024, Last Modified: 27 Jan 2026IEEE/ACM Transactions on NetworkingEveryoneRevisionsCC BY-SA 4.0
Abstract: This paper presents GLAC, the first 3D localization system that enables millimeter-level object manipulation for robotics using only COTS RFID devices. The key insight of GLAC is that mobility reduces ambiguity (One-to-many mapping relationship between phase and distance) and thus improves accuracy. Unlike state-of-the-art systems that require extra time or hardware to boost performance, it draws the power of modeling mobility in a delicate way. In particular, we build a novel framework for real-time tracking using the Hidden Markov Model (HMM). In our framework, multiple Kalman filters are designed to take a single phase observation for updating mobility states, and a fast inference algorithm is proposed to efficiently process an exponentially large number of candidate trajectories. We prototype GLAC with only UHF tags and a commercial reader of four antennas. Comprehensive experiments show that the median position accuracies of x/y/z dimensions are within 1 cm for both LoS and NLoS cases. The median position accuracy for slow-moving targets is 0.41 cm, which is $2.2\times $ , $17.3\times $ , and $14.9\times $ better than TurboTrack, Tagoram, and RF-IDraw, respectively. Also, its median velocity accuracy is at least $20\times $ better than all three competitors for fast-moving targets. Besides accuracy, it achieves more than $4\times $ localization time gains over state-of-the-art systems.
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