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Deep Fmask Dataset: Labeled dataset for Cloud, Shadow, Clear-Sky Land, Snow and Water Segmentation of Sentinel-2 Images over Snow and Ice Covered Regions

We present our dataset containing images with labeled polygons, annotated over Sentinel-2 L1C imagery from snow and ice-covered regions. We use similar labels as the Fmask cloud detection algorithm, i.e., clear-sky land, cloud, shadow, snow, and water. We annotated the labels manually using the QGIS software. The dataset consists of 45 scenes divided into validation (22 scenes) and test datasets (23 scenes). The source images were captured by the satellite between October 2019 and December 2020. We provide the list of '.SAFE' filenames containing the satellite imagery and these files can be downloaded from the Copernicus Open Access Hub. The dataset can be used to test and benchmark deep neural networks for the task of cloud, shadow, and snow segmentation.

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Cite this as

Nambiar, Kamal Gopikrishnan, Morgenshtern, Veniamin I, Hochreuther, Philipp, Seehaus, Thorsten, Braun, Matthias Holger (2022). Dataset: Deep Fmask Dataset: Labeled dataset for Cloud, Shadow, Clear-Sky Land, Snow and Water Segmentation of Sentinel-2 Images over Snow and Ice Covered Regions. https://doi.org/10.1594/PANGAEA.942321

DOI retrieved: 2022

Additional Info

Field Value
Imported on November 30, 2024
Last update November 30, 2024
License CC-BY-4.0
Source https://doi.org/10.1594/PANGAEA.942321
Author Nambiar, Kamal Gopikrishnan
Given Name Kamal Gopikrishnan
Family Name Nambiar
More Authors
Morgenshtern, Veniamin I
Hochreuther, Philipp
Seehaus, Thorsten
Braun, Matthias Holger
Source Creation 2022
Publication Year 2022
Subject Areas
Name: LandSurface

Related Identifiers
Title: A Self-Trained Model for Cloud, Shadow and Snow Detection in Sentinel-2 Images of Snow- and Ice-Covered Regions
Identifier: https://doi.org/10.3390/rs14081825
Type: DOI
Relation: References
Year: 2022
Source: Remote Sensing
Authors: Nambiar Kamal Gopikrishnan , Morgenshtern Veniamin I , Hochreuther Philipp , Seehaus Thorsten , Braun Matthias Holger .