Crowdsourcing EO datasets to improve cloud detection algorithms and land cover change

Aleksandrov, M., Batic, M., Milcinski, G., See, L. ORCID: https://orcid.org/0000-0002-2665-7065, Perger, C., Moorthy, I., & Fritz, S. ORCID: https://orcid.org/0000-0003-0420-8549 (2017). Crowdsourcing EO datasets to improve cloud detection algorithms and land cover change. In: Earth Observation Open Science 2017 Conference, 25-28 September 2017, Frascati, Italy.

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Abstract

Involving citizens in science is gaining considerable traction of late. With positive examples
(e.g. Geo-Wiki, FotoQuest Austria), a number of projects are exploring the options to engage
the public in contributing to scientific research, often by asking participants to collect some
data or validate some results. The International Institute for Applied Systems Analysis
(IIASA), with extensive experience in crowdsourcing and gamification, has joined Sinergise,
Copernicus Masters 2016 winners, to engage the public in an initiative involving ESA’s
Sentinel-2 satellite imagery.
Sentinel-2 imagery offers high revisit times and sufficient resolution for land change
detection applications. Unfortunately, simple (but fast) algorithms often fail due to many
false-positives: changes in clouds are perceived as land changes. The ability to discriminate
of cloudy pixels is thus crucial for any automatic or semi-automatic solutions that detect land
change.
A plethora of algorithms to distinguish clouds in Sentinel-2 data are available. However,
there is a need for better data on where and when clouds occur to help improve these
algorithms. To overcome this current gap in the data, we are engaging the public in this task.
Using a number of tools, developed at IIASA, and Sentinel Hub services, which provide fast
access to the entire global archive of Sentinel-2 data, the aim is to obtain a large data
resource of curated cloud classifications. The resulting dataset will be published as open
data and made available through Geopedia platform.
The gamified process will start by asking users if there are clouds on a small image (e.g. 8x8
pixels at the highest Sentinel-2 resolution of 10 m/px), which will provide us with a screening
process to pinpoint cloudy areas, employing Picture Pile crowdsourcing game from IIASA.
The next step will involve a more detailed workflow, as users will get a slightly larger image
(e.g. 64x64 pixels) and will then be asked to delineate different types of clouds: opaque
clouds (nothing is seen through the clouds), thick clouds (where the surface is still
discernible through the clouds), and thin clouds (where the surface is unequivocally covered
by a cloud); the rest of the image will be implicitly cloud-free. The resulting data will be
made available through the Geopedia portal, both for exploring and downloading. This
paper will demonstrate this process and show some results from a crowdsourcing campaign.
The approach will also allow us to collect other datasets in a rapid and efficient manner. For
example, using a slightly modified configuration, a similar workflow could be used to obtain
a manually curated land cover classification data set, which could be used as training data
for machine learning algorithms.

Item Type: Conference or Workshop Item (Paper)
Research Programs: Ecosystems Services and Management (ESM)
Depositing User: Luke Kirwan
Date Deposited: 29 Sep 2017 10:14
Last Modified: 19 Oct 2022 05:00
URI: https://pure.iiasa.ac.at/14857

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