SEMANTIC DIGITAL SURFACE MAP TOWARDS COLLABORATIVE OFF-ROAD VEHICLE AUTONOMY
2024-01-3877
11/15/2024
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ABSTRACT
The fundamental aspect of unmanned ground vehicle (UGV) navigation, especially over off-road environments, are representations of terrain describing geometry, types, and traversability. One of the typical representations of the environment is digital surface models (DSMs) which efficiently encode geometric information. In this research, we propose a collaborative approach for UGV navigation through unmanned aerial vehicle (UAV) mapping to create semantic DSMs, by leveraging the UAV wide field of view and nadir perspective for map surveying. Semantic segmentation models for terrain recognition are affected by sensing modality as well as dataset availability. We explored and developed semantic segmentation deep convolutional neural networks (CNN) models to construct semantic DSMs. We further conducted a thorough quantitative and qualitative analysis regarding image modalities (between RGB, RGB+DSM and RG+DSM) and dataset availability effects on the performance of segmentation CNN models.
Citation: H. J. J. Brand, B. Li, “Semantic Digital Surface Map Towards Collaborative Off-Road Vehicle Autonomy”, In Proceedings of the Ground Vehicle Systems Engineering and Technology Symposium (GVSETS), NDIA, Novi, MI, Aug. 11-13, 2020.
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- Citation
- Brand, H., and Li, B., "SEMANTIC DIGITAL SURFACE MAP TOWARDS COLLABORATIVE OFF-ROAD VEHICLE AUTONOMY," SAE Technical Paper 2024-01-3877, 2024, https://doi.org/10.4271/2024-01-3877.