Outlier-Robust Long-Term Robotic Mapping Leveraging Ground Segmentation
Hyungtae Lim

TL;DR
This paper introduces a robust long-term robotic mapping framework that combines ground segmentation, outlier-robust registration using graduated non-convexity, multi-session SLAM, and instance-aware static map building to handle dynamic environments and outliers.
Contribution
It presents a novel combination of ground segmentation and GNC-based registration techniques for robust long-term SLAM in dynamic, real-world environments.
Findings
Effective ground segmentation rejects non-informative points.
GNC-based registration outperforms traditional methods in outlier scenarios.
Hierarchical multi-session SLAM maintains map consistency over time.
Abstract
Despite the remarkable advancements in deep learning-based perception technologies and simultaneous localization and mapping (SLAM), one can face the failure of these approaches when robots encounter scenarios outside their modeled experiences (here, the term modeling encompasses both conventional pattern finding and data-driven approaches). In particular, because learning-based methods are prone to catastrophic failure when operated in untrained scenes, there is still a demand for conventional yet robust approaches that work out of the box in diverse scenarios, such as real-world robotic services and SLAM competitions. In addition, the dynamic nature of real-world environments, characterized by changing surroundings over time and the presence of moving objects, leads to undesirable data points that hinder a robot from localization and path planning. Consequently, methodologies that…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · 3D Surveying and Cultural Heritage · Satellite Image Processing and Photogrammetry
