There is a newer version of the record available.

Published May 13, 2020 | Version v1
Dataset Open

Drone aerial imagery of a section of coastline in a small bay in Godthåbsfjord (SW Greenland) acquired during Mission Arctic 2017

  • 1. Helmholtz Zentrum Geesthacht
  • 2. Mission Arctic

Description

Aerial images of a small island in Kobbefjord (SW Greenland) were acquired on 11 July 2017 using a DJI Phantom 3 Standard quadcopter drone. The imagery was acquired during the Mission Arctic citizen science expedition (http://www.missionarctic.com/). Overlapping images were acquired during two consecutive flights using the 'interval' setting with a period of 5 seconds in the DJI Go app. The drone was flown manually. This drone survey was carried out with two primary objectives in mind: 1) Identify and quantify the macroalgae growing on the coast; 2) Identify any archaeological and cultural heritage sites that may be present. Images were processed using Agisoft PhotoScan Pro (v1.4.4; Linux Ubuntu). Images were aligned using the script CARMA_PhotoScan_Align.py (see this script for settings). After image alignment, the bounding box was visually inspected and the sparse point cloud was thinned using thresholds for the reconstruction uncertainty, projection accuracy, and reprojection error (gradual selection).  The remaining tie points in the sparse cloud were then used to build the dense cloud. The settings used for this step can be found in the script CARMA_PhotoScan_GS_DC_v2.py. Next, the dense point cloud was used to generate a digital elevation model (DEM) and, subsequently, an orthomosaic. The Agisoft PhotoScan processing report is also included.

Files

20170711_GFBay.zip

Files (1.3 GB)

Name Size Download all
md5:5a2efa153f8a4fe1636e3b216e62e6d0
1.3 GB Preview Download
md5:768e759c86532e7218015dcf1e8e538e
498 Bytes Download
md5:e5859852203f25e45d1491cac5408fe8
8.1 MB Preview Download
md5:7cf21e3cbe16cc7cdbccfe473c7a29be
483 Bytes Download
md5:942677226c45ae7f6aca6ad5647ec6d3
6.2 MB Preview Download
md5:720e9c8c17b773b5ae9ff623066f99eb
9.9 MB Preview Download
md5:61b166a958e66e9e2d4f1e951b87f889
4.9 kB Download
md5:70bfe6d3b5796f07a41443a913faf87c
6.2 kB Download