Evaluating the Potential of PROBA-V Satellite Image Time Series for Improving LC Classification in Semi-Arid African Landscapes

Satellite based land cover classification for Africa’s semi-arid ecosystems is hampered commonly by heterogeneous landscapes with mixed vegetation and small scale land use. Higher spatial resolution remote sensing time series data can improve classification results under these difficult conditions....

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Main Authors: Johannes Eberenz, Jan Verbesselt, Martin Herold, Nandin-Erdene Tsendbazar, Giovanni Sabatino, Giancarlo Rivolta
Format: Article
Language:English
Published: MDPI AG 2016-11-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/8/12/987
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spelling doaj-eefa280739af485e944cb4c5498fda722020-11-24T22:32:41ZengMDPI AGRemote Sensing2072-42922016-11-0181298710.3390/rs8120987rs8120987Evaluating the Potential of PROBA-V Satellite Image Time Series for Improving LC Classification in Semi-Arid African LandscapesJohannes Eberenz0Jan Verbesselt1Martin Herold2Nandin-Erdene Tsendbazar3Giovanni Sabatino4Giancarlo Rivolta5Laboratory of Geo-Information Science and Remote Sensing, Wageningen University, 6708PB Wageningen, The NetherlandsLaboratory of Geo-Information Science and Remote Sensing, Wageningen University, 6708PB Wageningen, The NetherlandsLaboratory of Geo-Information Science and Remote Sensing, Wageningen University, 6708PB Wageningen, The NetherlandsLaboratory of Geo-Information Science and Remote Sensing, Wageningen University, 6708PB Wageningen, The NetherlandsESA Research and Service Support, via Galileo Galilei, 1, 00044 Frascati, ItalyESA Research and Service Support, via Galileo Galilei, 1, 00044 Frascati, ItalySatellite based land cover classification for Africa’s semi-arid ecosystems is hampered commonly by heterogeneous landscapes with mixed vegetation and small scale land use. Higher spatial resolution remote sensing time series data can improve classification results under these difficult conditions. While most large scale land cover mapping attempts rely on moderate resolution data, PROBA-V provides five-daily time series at 100 m spatial resolution. This improves spatial detail and resilience against high cloud cover, but increases the data load. Cloud-based processing platforms can leverage large scale land cover monitoring based on such finer time series. We demonstrate this with PROBA-V 100 m time series data from 2014–2015, using temporal metrics and cloud filtering in combination with in-situ training data and machine learning, implemented on the ESA (European Space Agency) Cloud Toolbox infrastructure. We apply our approach to two use cases for a large study area over West Africa: land- and forest cover classification. Our land cover classification reaches a 7% to 21% higher overall accuracy when compared to four global land cover maps (i.e., Globcover-2009, Cover-CCI-2010, MODIS-2010, and Globeland30). Our forest cover classification shows 89% correspondence with the Tropical Ecosystem Environment Observation System (TREES)-3 forest cover data which is based on spatially finer Landsat data. This paper illustrates a proof of concept for cloud-based “big-data” driven land cover monitoring. Furthermore, we show that a wide range of temporal metrics can be extracted from detailed PROBA-V 100 m time series data to continuously optimize land cover monitoring.http://www.mdpi.com/2072-4292/8/12/987time seriesland coverclassificationPROBA-Vsemi-aridAfricamachine learning
collection DOAJ
language English
format Article
sources DOAJ
author Johannes Eberenz
Jan Verbesselt
Martin Herold
Nandin-Erdene Tsendbazar
Giovanni Sabatino
Giancarlo Rivolta
spellingShingle Johannes Eberenz
Jan Verbesselt
Martin Herold
Nandin-Erdene Tsendbazar
Giovanni Sabatino
Giancarlo Rivolta
Evaluating the Potential of PROBA-V Satellite Image Time Series for Improving LC Classification in Semi-Arid African Landscapes
Remote Sensing
time series
land cover
classification
PROBA-V
semi-arid
Africa
machine learning
author_facet Johannes Eberenz
Jan Verbesselt
Martin Herold
Nandin-Erdene Tsendbazar
Giovanni Sabatino
Giancarlo Rivolta
author_sort Johannes Eberenz
title Evaluating the Potential of PROBA-V Satellite Image Time Series for Improving LC Classification in Semi-Arid African Landscapes
title_short Evaluating the Potential of PROBA-V Satellite Image Time Series for Improving LC Classification in Semi-Arid African Landscapes
title_full Evaluating the Potential of PROBA-V Satellite Image Time Series for Improving LC Classification in Semi-Arid African Landscapes
title_fullStr Evaluating the Potential of PROBA-V Satellite Image Time Series for Improving LC Classification in Semi-Arid African Landscapes
title_full_unstemmed Evaluating the Potential of PROBA-V Satellite Image Time Series for Improving LC Classification in Semi-Arid African Landscapes
title_sort evaluating the potential of proba-v satellite image time series for improving lc classification in semi-arid african landscapes
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2016-11-01
description Satellite based land cover classification for Africa’s semi-arid ecosystems is hampered commonly by heterogeneous landscapes with mixed vegetation and small scale land use. Higher spatial resolution remote sensing time series data can improve classification results under these difficult conditions. While most large scale land cover mapping attempts rely on moderate resolution data, PROBA-V provides five-daily time series at 100 m spatial resolution. This improves spatial detail and resilience against high cloud cover, but increases the data load. Cloud-based processing platforms can leverage large scale land cover monitoring based on such finer time series. We demonstrate this with PROBA-V 100 m time series data from 2014–2015, using temporal metrics and cloud filtering in combination with in-situ training data and machine learning, implemented on the ESA (European Space Agency) Cloud Toolbox infrastructure. We apply our approach to two use cases for a large study area over West Africa: land- and forest cover classification. Our land cover classification reaches a 7% to 21% higher overall accuracy when compared to four global land cover maps (i.e., Globcover-2009, Cover-CCI-2010, MODIS-2010, and Globeland30). Our forest cover classification shows 89% correspondence with the Tropical Ecosystem Environment Observation System (TREES)-3 forest cover data which is based on spatially finer Landsat data. This paper illustrates a proof of concept for cloud-based “big-data” driven land cover monitoring. Furthermore, we show that a wide range of temporal metrics can be extracted from detailed PROBA-V 100 m time series data to continuously optimize land cover monitoring.
topic time series
land cover
classification
PROBA-V
semi-arid
Africa
machine learning
url http://www.mdpi.com/2072-4292/8/12/987
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