Not logged in
PANGAEA.
Data Publisher for Earth & Environmental Science

Koskinen, Joni; Leinonen, Ulpu; Vollrath, Andreas; Ortmann, Antonia; Lindquist, Erik J; d'Annunzio, Remi; Pekkarinen, Anssi; Käyhkö, Niina (2018): Forest plantation mapping in the Southern Highlands, Tanzania 2016 [dataset publication series]. PANGAEA, https://doi.org/10.1594/PANGAEA.894892, Supplement to: Koskinen, J et al. (2019): Participatory mapping of forest plantations with Open Foris and Google Earth Engine. ISPRS Journal of Photogrammetry and Remote Sensing, 148, 63-74, https://doi.org/10.1016/j.isprsjprs.2018.12.011

Always quote citation above when using data! You can download the citation in several formats below.

RIS CitationBibTeX CitationShow MapGoogle Earth

Abstract:
Recent years have witnessed the practical value of open-access Earth observation data catalogues and software in land and forest mapping. Combined with cloud-based computing resources, and data collection though the crowd, these solutions have substantially improved possibilities for monitoring changes in land resources, especially in areas with difficult accessibility and data scarcity. In this study, we developed and tested a participatory mapping methodology utilizing the open data catalogues and cloud computing capacity to map the previously unknown extent and species composition of forest plantations in the Southern Highlands area of Tanzania, a region experiencing a rapid growth of smallholder-owned woodlots. A large reference data, focusing on plantation coverage, species and age information, was collected in a two-week Participatory GIS campaign where 22 Tanzanian experts interpreted high-resolution satellite images in Google Earth with Open Foris Collect Earth tool developed by FAO. The collected samples were used as training data to classify a multi-sensor image stack of Landsat 8 OLI (2013-2015), Sentinel-2 (2015-2016), Sentinel-1 (2015), and SRTM derived elevation and slope data layers into 30m resolution plantation map. The results show that the plantation area was estimated with high overall accuracy (85%). The interpretation accuracy of local experts was high considering general definition of plantation declining with increased details in interpretation attributes. The results showcase the unique value of local expert participation, enabling the collection of thousands of reference samples over a large geographical area in a short period of time simultaneously building the capacity of the experts. However, sufficient training prior the data collection is crucial for the interpretation success especially when detailed interpretation is conducted in complex landscapes. Since the methodology is built on open-access data and software, it presents a highly feasible solution for repetitive land resource mapping applicable at different spatial scales globally.
Coverage:
Median Latitude: -8.853534 * Median Longitude: 35.006125 * South-bound Latitude: -11.000000 * West-bound Longitude: 31.995719 * North-bound Latitude: -6.700000 * East-bound Longitude: 37.043427
Event(s):
Tanzania_Southern_Highlands * Latitude Start: -6.700000 * Longitude Start: 32.000000 * Latitude End: -11.000000 * Longitude End: 37.000000 * Location: Tanzania, United Republic of * Method/Device: Multiple investigations (MULT) * Comment: Forest plantation mapping
Size:
5 datasets

Download Data

Download ZIP file containing all datasets as tab-delimited text — use the following character encoding: