Benutzer: Gast  Login
Dokumenttyp:
Forschungsdaten
Veröffentlichungsdatum:
28.09.2018
Autorinnen / Autoren:
Zhu, Xiaoxiang ; Hu, Jingliang ; Qiu, Chunping ; Shi, Yilei ; Bagheri, Hossein ; Kang, Jian ; Li, Hao ; Mou, Lichao ; Zhang, Guicheng ; Häberle, Matthias ; Han, Shiyao ; Hua, Yuansheng ; Huang, Rong ; Hughes, Lloyd ; Sun, Yao ; Schmitt, Michael; Wang, Yuanyuan
Institutionszugehörigkeit:
Zhu, Xiaoxiang (TUM, DLR); Hu, Jingliang (DLR); Qiu, Chunping (TUM); Shi, Yilei (TUM); Bagheri, Hossein (TUM); Kang, Jian (TUM); Li, Hao (TUM); Mou, Lichao (TUM); Zhang, Guicheng (TUM); Häberle, Matthias (DLR); Han, Shiyao (TUM); Hua, Yuansheng (TUM); Huang, Rong (TUM); Hughes, Lloyd (TUM); Sun, Yao (DLR); Schmitt, Michael (TUM); Wang, Yuanyuan (TUM)
Herausgeber:
TUM
Titel:
So2Sat LCZ42
Identifikator:
doi:10.14459/2018MP1454690
Enddatum der Datenerzeugung:
30.08.2018
Fachgebiet:
BAU Bauingenieurwesen, Vermessungswesen; DAT Datenverarbeitung, Informatik; GEO Geowissenschaften
Quellen der Daten:
Abbildungen von Objekten / image of objects
Datentyp:
Bilder / images
Methode der Datenerhebung:
Sentinel-1 image downloaded from ESA SciHub, and prepared by ESA SNAP software. Sentinel-2 image semi-automatically downloaded and prepared using Google Earth Engine and MATLAB. The local climate zones labels were manually labeled.
Beschreibung:
So2Sat LCZ42 is a dataset consisting of co-registered synthetic aperture radar and multispectral optical image patches acquired by the Sentinel-1 and Sentinel-2 remote sensing satellites, and the corresponding local climate zones (LCZ) label. The dataset is distributed over 42 cities across different continents and cultural regions of the world.
Links:

This is version 1 of the dataset. See download link below
Link to version 2 (containing additional test data): https://mediatum.ub.tum.de/1483140
Link to version 3 (containing 2 more training testing splits): https://mediatum.ub.tum.de/1613658
A detailed description of this dataset, and its different versions: https://github.com/zhu-xlab/So2Sat-LCZ42

Schlagworte:
local climate zones ; big data ; classification ; remote sensing ; deep learning ; data fusion ; synthetic aperture radar imagery ; optical imagery
Technische Hinweise:
View and download (51.8 GB, 6 files)
The data server also offers downloads with FTP
The data server also offers downloads with rsync (password m1454690):
rsync rsync://m1454690@dataserv.ub.tum.de/m1454690/
Sprache:
en
Rechte:
by, http://creativecommons.org/licenses/by/4.0
Horizon 2020:
ERC-2016-StG-714087
 BibTeX