The HAInich: A multidisciplinary vision data-set for a better understanding of the forest ecosystem
Creators
- 1. Spleenlab GmbH, Technical University of Ilmenau, dAI.SY
- 2. Max Planck Institute for Biogeochemistry, Biogeochemical Integration*
- 3. Spleenlab GmbH
- 4. University of Göttingen
- 5. Technical University of Ilmenau, dAI.SY
Description
We present a multidisciplinary forest ecosystem 3D perception dataset. The dataset was collected in the Hainich-Dün region in central Germany, which includes two dedicated areas, which are part of the Biodiversity Exploratories - a long term research platform for comparative and experimental biodiversity and ecosystem research. The dataset combines several disciplines, including computer science and robotics, biology, bio-geochemistry, and forestry science. We present results for common 3D perception tasks, including classification, depth estimation, localization, and path planning. We combine the full suite of modern perception sensors, including high-resolution fisheye cameras, 3D dense LiDAR, differential GPS, and an inertial measurement unit, with ecological metadata of the area, including stand age, diameter, exact 3D position, and species. The dataset consists of three hand held measurement series taken from sensors mounted on a UAV during each of three seasons: winter, spring, and early summer. This enables new research opportunities and paves the way for testing forest environment 3D perception tasks and mission set automation. We do not focus on even more accurate and better forest data collection, our focus is automated forest inventory for robots.
Notes
Files
Intrinsic.zip
Files
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