Monitoring long-term forest dynamics with scarce data: a multi-date classification implementation in the Ecuadorian Amazon

Monitoring long-term forest dynamics is essential for assessing human-induced land-cover changes, and related studies are often based on the multi-decadal Landsat archive. However, in areas such as the Tropical Andes, scarce data and the resulting poor signal-to-noise ratio in time series data rende...

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Main Authors: Fabián Santos, Pablo Meneses, Patrick Hostert
Format: Article
Language:English
Published: Taylor & Francis Group 2019-03-01
Series:European Journal of Remote Sensing
Subjects:
Online Access:http://dx.doi.org/10.1080/22797254.2018.1533793
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spelling doaj-42bf8f339373465da4dee1fc002132ef2020-11-24T21:33:40ZengTaylor & Francis GroupEuropean Journal of Remote Sensing2279-72542019-03-01520627810.1080/22797254.2018.15337931533793Monitoring long-term forest dynamics with scarce data: a multi-date classification implementation in the Ecuadorian AmazonFabián Santos0Pablo Meneses1Patrick Hostert2University of BonnUniversidad Regional Amazónica IkiamHumboldt-Universität zu BerlinMonitoring long-term forest dynamics is essential for assessing human-induced land-cover changes, and related studies are often based on the multi-decadal Landsat archive. However, in areas such as the Tropical Andes, scarce data and the resulting poor signal-to-noise ratio in time series data render the implementation of automated time-series analysis algorithms difficult. The aim of this research was to investigate a novel approach that combines image compositing, multi-sensor data fusion, and postclassification change detection that is applicable in data-scarce regions of the Tropical Andes, exemplified for a case study in Ecuador. We derived biennial deforestation and reforestation patterns for the period from 1992 to 2014, achieving accuracies of 82 ± 3% for deforestation and 71 ± 3% for reforestation mapping. Our research demonstrated that an adapted methodology allowed us to derive the forest dynamics from the Landsat time series, despite the abundant regional data gaps in the archive, namely across the Tropical Andes. This study, therefore, presented a novel methodology in support of monitoring long-term forest dynamics in areas with limited historical data availability.http://dx.doi.org/10.1080/22797254.2018.1533793Forests dynamicsecosystem monitoringdeforestationreforestationLandsattime-series analysis
collection DOAJ
language English
format Article
sources DOAJ
author Fabián Santos
Pablo Meneses
Patrick Hostert
spellingShingle Fabián Santos
Pablo Meneses
Patrick Hostert
Monitoring long-term forest dynamics with scarce data: a multi-date classification implementation in the Ecuadorian Amazon
European Journal of Remote Sensing
Forests dynamics
ecosystem monitoring
deforestation
reforestation
Landsat
time-series analysis
author_facet Fabián Santos
Pablo Meneses
Patrick Hostert
author_sort Fabián Santos
title Monitoring long-term forest dynamics with scarce data: a multi-date classification implementation in the Ecuadorian Amazon
title_short Monitoring long-term forest dynamics with scarce data: a multi-date classification implementation in the Ecuadorian Amazon
title_full Monitoring long-term forest dynamics with scarce data: a multi-date classification implementation in the Ecuadorian Amazon
title_fullStr Monitoring long-term forest dynamics with scarce data: a multi-date classification implementation in the Ecuadorian Amazon
title_full_unstemmed Monitoring long-term forest dynamics with scarce data: a multi-date classification implementation in the Ecuadorian Amazon
title_sort monitoring long-term forest dynamics with scarce data: a multi-date classification implementation in the ecuadorian amazon
publisher Taylor & Francis Group
series European Journal of Remote Sensing
issn 2279-7254
publishDate 2019-03-01
description Monitoring long-term forest dynamics is essential for assessing human-induced land-cover changes, and related studies are often based on the multi-decadal Landsat archive. However, in areas such as the Tropical Andes, scarce data and the resulting poor signal-to-noise ratio in time series data render the implementation of automated time-series analysis algorithms difficult. The aim of this research was to investigate a novel approach that combines image compositing, multi-sensor data fusion, and postclassification change detection that is applicable in data-scarce regions of the Tropical Andes, exemplified for a case study in Ecuador. We derived biennial deforestation and reforestation patterns for the period from 1992 to 2014, achieving accuracies of 82 ± 3% for deforestation and 71 ± 3% for reforestation mapping. Our research demonstrated that an adapted methodology allowed us to derive the forest dynamics from the Landsat time series, despite the abundant regional data gaps in the archive, namely across the Tropical Andes. This study, therefore, presented a novel methodology in support of monitoring long-term forest dynamics in areas with limited historical data availability.
topic Forests dynamics
ecosystem monitoring
deforestation
reforestation
Landsat
time-series analysis
url http://dx.doi.org/10.1080/22797254.2018.1533793
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