Information-Theoretic Geometry Optimization and Physics-Aware Learning for Calibration-Free Magnetic Localization
Wenxuan Xie, Yuelin Zhang, Qingpeng Ding, Jianghua Chen, Jiewen Tan + 2 more
TLDR
A unified framework optimizes sensor geometry and uses physics-aware deep learning for highly accurate, calibration-free magnetic localization.
Key contributions
- Establishes a Fisher Information Matrix (FIM) framework to optimize sensor geometry for magnetic localization.
- Proposes a staggered split-array sensor topology that substantially improves localization observability.
- Introduces Phy-GAANet, a physics-aware deep learning estimator bridging the Sim-to-Real gap for calibration-free operation.
- Achieves state-of-the-art performance with 1.84mm position and 3.18° orientation error at >270 Hz.
Why it matters
This paper addresses critical limitations in magnetic localization by combining sensor geometry optimization with advanced deep learning. It offers a robust, calibration-free solution with state-of-the-art accuracy, crucial for medical interventions. The FIM-guided design also provides a general framework for future sensor development.
Original Abstract
Wireless localization of permanent magnets enables occlusion-free guidance for medical interventions, yet its practical accuracy is fundamentally limited by two coupled challenges: the poor observability of conventional planar sensor arrays and the simulation-to-reality (Sim-to-Real) gap of learning-based estimators. To address these issues, this article presents a unified framework that combines information-theoretic sensor geometry optimization with physics-aware deep learning. First, a rigorous Fisher Information Matrix (FIM)-based evaluation framework is established to quantify geometry-induced observability limitations. The results show that a staggered split-array topology provides a substantially stronger observability foundation for localization while remaining compatible with practical external deployment. Second, building on this optimized sensing configuration, we propose Phy-GAANet, a calibration-free estimator trained entirely on hardware-aware synthetic data. By incorporating Physics-Informed Features (PIF) for saturation modeling and Geometry-Aware Attention (GAA) for preserving cross-layer vector structure, the network effectively bridges the Sim-to-Real gap. Extensive real-world experiments demonstrate state-of-the-art performance, achieving a position error of 1.84 mm and an orientation error of 3.18 degrees at a refresh rate exceeding 270 Hz. The proposed method consistently outperforms classical Levenberg--Marquardt solvers and generic convolutional baselines, particularly in suppressing catastrophic outliers and maintaining robustness in challenging near-field boundary regions. Beyond the proposed network, the FIM-guided analysis also provides a framework for sensor geometry design in magnetic localization systems under practical deployment constraints.
📬 Weekly AI Paper Digest
Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.