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[CS.AI] Geometry-Aware Infrastructure-Anchored Denoiser for UWB Sensing

Published at: 2026-07-09 22:00 Last updated: 2026-07-10 03:14
#algorithm #AI #Open Source

Abstract

Accurate work-zone geometry perception is critical for intelligent transportation systems, and ultra-wideband (UWB) sensing offers a low-cost approach for infrastructure-aided reconstruction. However, outdoor UWB ranging is often degraded by non-line-of-sight propagation, burst noise, and long-tail errors, which can distort downstream spatial reconstruction.

We present GAIA, a geometry-aware, infrastructure-anchored learning framework that couples temporal range modeling with latent anchor-layout estimation and deterministic distance projection. GAIA preserves range denoising as the supervised task while orienting the learned distances toward boundary-consistent reconstruction.

We evaluate GAIA on a real-world outdoor UWB dataset with synchronized UWB, GNSS, and IMU measurements, and further test robustness using a real-data-calibrated stress-test simulator. GAIA achieves the lowest overall range MSE and highest polygon IoU among evaluated filtering-based and learning-based baselines, reducing MSE by 18.4% and improving polygon IoU by 15.5% over PoseMLP. These results show that geometry-aware range denoising provides an effective path toward spatially coherent work-zone reconstruction.

Blogger's Review: The GAIA framework significantly enhances work-zone reconstruction accuracy by integrating geometric information with UWB sensor data. This approach excels not only in noise reduction but also improves reconstruction quality through boundary consistency, showcasing the potential of geometry-aware techniques in intelligent transportation systems.

Original Source: https://arxiv.org/abs/2607.05449

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