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G-EDF-Loc: 3D Continuous Gaussian Distance Field for Robust Gradient-Based 6DoF Localization

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This paper presents a robust 6-DoF localization framework based on a direct, CPU-based scan-to-map registration pipeline. The system leverages G-EDF, a novel continuous and memory-efficient 3D distance field representation. The approach models the Euclidean Distance Field (EDF) using a Block-Sparse Gaussian Mixture Model with adaptive spatial partitioning, ensuring $C^1$ continuity across block transitions and mitigating boundary artifacts. By leveraging the analytical gradients of this continuous map, which maintain Eikonal consistency, the proposed method achieves high-fidelity spatial reconstruction and real-time localization. Experimental results on large-scale datasets demonstrate that G-EDF-Loc performs competitively against state-of-the-art methods, exhibiting exceptional resilience even under severe odometry degradation or in the complete absence of IMU priors.

Jos\'e E. Maese, Luc\'ia Coto-Elena, Luis Merino, Fernando Caballero• 2026

Related benchmarks

TaskDatasetResultRank
6DoF LocalizationNewer College Snail bc trajectory
Pos Acc0.084
12
6DoF LocalizationNewer College Snail (st trajectory)
Positional Accuracy16.5
11
6DoF LocalizationNewer College Snail quad-medium trajectory
Positional Error0.107
11
6DoF LocalizationNewer College Snail park trajectory
Positional Error0.099
11
6DoF LocalizationNewer College Snail quad-hard trajectory
Positional Error0.105
10
6DoF LocalizationNewer College Snail sl trajectory
Positional Error0.157
10
6DoF LocalizationNewer College Snail ss trajectory
Positional Error0.114
9
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