FIM-optimized staggered sensor geometry combined with Phy-GAANet using physics-informed features and geometry-aware attention achieves 1.84 mm position error and 3.18 degree orientation error at over 270 Hz in real-world tests, outperforming classical solvers and standard CNNs.
Design and optimization strategy of sensor array layout for magnetic localization system
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Information-Theoretic Geometry Optimization and Physics-Aware Learning for Calibration-Free Magnetic Localization
FIM-optimized staggered sensor geometry combined with Phy-GAANet using physics-informed features and geometry-aware attention achieves 1.84 mm position error and 3.18 degree orientation error at over 270 Hz in real-world tests, outperforming classical solvers and standard CNNs.