DiTer++: Diverse Terrain and Multi-modal Dataset for Multi-Robot SLAM in Multi-session Environments
We encounter large-scale environments where both structured and unstructured spaces coexist, such as on campuses. In this environment, lighting conditions and dynamic objects change constantly. To tackle the challenges of large-scale mapping under such conditions, we introduce DiTer++, a diverse ter...
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Zusammenfassung: | We encounter large-scale environments where both structured and unstructured
spaces coexist, such as on campuses. In this environment, lighting conditions
and dynamic objects change constantly. To tackle the challenges of large-scale
mapping under such conditions, we introduce DiTer++, a diverse terrain and
multi-modal dataset designed for multi-robot SLAM in multi-session
environments. According to our datasets' scenarios, Agent-A and Agent-B scan
the area designated for efficient large-scale mapping day and night,
respectively. Also, we utilize legged robots for terrain-agnostic traversing.
To generate the ground-truth of each robot, we first build the survey-grade
prior map. Then, we remove the dynamic objects and outliers from the prior map
and extract the trajectory through scan-to-map matching. Our dataset and
supplement materials are available at
https://sites.google.com/view/diter-plusplus/. |
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DOI: | 10.48550/arxiv.2412.05839 |