TL;DR
The Hilti SLAM Challenge Dataset provides diverse, realistic indoor and outdoor sequences with millimeter-level ground truth to advance sensor fusion SLAM algorithms for real-world applications.
Contribution
This paper introduces a comprehensive dataset with challenging real-world scenarios and accurate ground truth to facilitate development of robust SLAM systems.
Findings
Dataset includes indoor and outdoor sequences with featureless areas.
Sensor calibration includes visual, lidar, and inertial sensors.
Challenge results demonstrate dataset's utility in improving SLAM robustness.
Abstract
Research in Simultaneous Localization and Mapping (SLAM) has made outstanding progress over the past years. SLAM systems are nowadays transitioning from academic to real world applications. However, this transition has posed new demanding challenges in terms of accuracy and robustness. To develop new SLAM systems that can address these challenges, new datasets containing cutting-edge hardware and realistic scenarios are required. We propose the Hilti SLAM Challenge Dataset. Our dataset contains indoor sequences of offices, labs, and construction environments and outdoor sequences of construction sites and parking areas. All these sequences are characterized by featureless areas and varying illumination conditions that are typical in real-world scenarios and pose great challenges to SLAM algorithms that have been developed in confined lab environments. Accurate sparse ground truth, at…
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