An RTK-SLAM Dataset for Absolute Accuracy Evaluation in GNSS-Degraded Environments
Wei Zhang, Vincent Ress, David Skuddis, Uwe Soergel, Norbert Haala

TL;DR
This paper introduces a new dataset and evaluation method for RTK-SLAM systems that accurately measure global positioning errors without the misleading effects of SE(3) alignment, revealing true system accuracy.
Contribution
It provides a geodetically referenced dataset and evaluation approach that exposes the limitations of traditional error metrics in RTK-SLAM assessment.
Findings
SE(3) alignment can underestimate errors by up to 76%
RTK-SLAM achieves centimeter-level accuracy outdoors
Indoor RTK-SLAM maintains decimeter-level accuracy
Abstract
RTK-SLAM systems integrate simultaneous localization and mapping (SLAM) with real-time kinematic (RTK) GNSS positioning, promising both relative consistency and globally referenced coordinates for efficient georeferenced surveying. A critical and underappreciated issue is that the standard evaluation metric, Absolute Trajectory Error (ATE), first fits an optimal rigid-body transformation between the estimated trajectory and reference before computing errors. This so-called SE(3) alignment absorbs global drift and systematic errors, making trajectories appear more accurate than they are in practice, and is unsuitable for evaluating the global accuracy of RTK-SLAM. We present a geodetically referenced dataset and evaluation methodology that expose this gap. A key design principle is that the RTK receiver is used solely as a system input, while ground truth is established independently via…
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