3D mesh model and raw images of a drifting iceberg in Dickson Fjord (NE Greenland) on 20 August 2018 at 12:41 UTC
- 1. Institute of Coastal Research, Helmholtz-Zentrum Geesthacht, Centre for Materials and Coastal Research
- 2. Aarhus University, Department of Biology, Ecoinformatics and Biodiversity, Aarhus, Denmark
- 3. Arctic Research Centre, Department of Biology, Aarhus University, Aarhus, Denmark
- 4. Greenland Climate Research Centre, Greenland Institute of Natural Resources, Nuuk, Greenland
- 5. Department of Bioscience, Aarhus University, Roskilde, Denmark
Description
This dataset consists of low-altitude aerial imagery that was acquired by a DJI Phantom 3 Standard unoccupied aerial vehicle (UAV) in Dickson Fjord in northeast Greenland on 20 August 2018. The UAV survey commenced at 12:41 UTC. These images were processed in Agisoft PhotoScan Pro (v1.4; Linux Ubuntu). During the image alignment step in PhotoScan, the ‘High’ accuracy setting and key point and tie point limits of 60000 and 0 were used. Generic and reference preselection were disabled. Gradual selection was used to remove tie points that exceeded thresholds for the projection accuracy, reconstruction uncertainty, and reprojection error and the lens parameters were computed. Reference data from images DJI_493-497 were used to scale the sparse point cloud. The dense point cloud was then computed using the ‘High’ setting, followed by the textured mesh. The mesh model was exported in .obj and .pdf formats.
A complete file list is provided in the README file that accompanies this dataset.
This dataset is discussed in:
Carlson et al. Quantifying iceberg deterioration using UAV imagery and Structure from Motion photogrammetry software. Submitted to Remote Sensing.
Files
20180820T1241_mesh.pdf
Files
(758.4 MB)
Name | Size | Download all |
---|---|---|
md5:9be0a5c4efa5841ef48a6a64ac8761ea
|
80 Bytes | Download |
md5:09829a5f6213de10e443e22e238ff1f0
|
77.4 MB | Download |
md5:51f08b3814b44a5df0f340286db937ae
|
72.0 MB | Preview Download |
md5:7cb7f423accec909789bc3456c7fceec
|
608.9 MB | Preview Download |
md5:511fae0d9c57feccc3e00b7e16e54f50
|
61.8 kB | Preview Download |
md5:d7bc98633a3cbc9cb5586e2825be691c
|
1.5 kB | Preview Download |