Dimension Reduction of Multi-Spectral Satellite Image Time Series to Improve Deforestation Monitoring

In recent years, sequential tests for detecting structural changes in time series have been adapted for deforestation monitoring using satellite data. The input time series of such sequential tests is typically a vegetation index (e.g., NDVI), which uses two or three bands and ignores all other band...

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Main Authors: Meng Lu, Eliakim Hamunyela, Jan Verbesselt, Edzer Pebesma
Format: Article
Language:English
Published: MDPI AG 2017-10-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/9/10/1025
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spelling doaj-1a97082f84474640bce0c5f88137fb132020-11-24T22:52:29ZengMDPI AGRemote Sensing2072-42922017-10-01910102510.3390/rs9101025rs9101025Dimension Reduction of Multi-Spectral Satellite Image Time Series to Improve Deforestation MonitoringMeng Lu0Eliakim Hamunyela1Jan Verbesselt2Edzer Pebesma3Institute for Geoinformatics, Westfälische Wilhelms-Universität Münster (WWU), Heisenbergstraße 2, 48149 Münster, GermanyLaboratory of Geo-Information Science and Remote Sensing, Wageningen University, Droevendaalsesteeg 3, 6708 PB Wageningen, The NetherlandsLaboratory of Geo-Information Science and Remote Sensing, Wageningen University, Droevendaalsesteeg 3, 6708 PB Wageningen, The NetherlandsInstitute for Geoinformatics, Westfälische Wilhelms-Universität Münster (WWU), Heisenbergstraße 2, 48149 Münster, GermanyIn recent years, sequential tests for detecting structural changes in time series have been adapted for deforestation monitoring using satellite data. The input time series of such sequential tests is typically a vegetation index (e.g., NDVI), which uses two or three bands and ignores all other bands. Being limited to a vegetation index will not benefit from the richer spectral information provided by newly launched satellites and will bring two bottle-necks for deforestation monitoring. Firstly, it is hard to select a suitable vegetation index a priori. Secondly, a single vegetation index is typically affected by seasonal signals, noise and other natural dynamics, which decrease its power for deforestation detection. A novel multispectral time series change monitoring method that combines dimension reduction methods with a sequential hypothesis test is proposed to address these limitations. For each location, the proposed method automatically chooses a “suitable” index for deforestation monitoring. To demonstrate our approach, we implemented it in two study areas: a dry tropical forest in Bolivia (time series length: 444) with strong seasonality and a moist tropical forest in Brazil (time series length: 225) with almost no seasonality. Our method significantly improves accuracy in the presence of strong seasonality, in particular the temporal lag between disturbance and its detection.https://www.mdpi.com/2072-4292/9/10/1025multi-spectraldimension reductiondeforestation monitorLandsat time series
collection DOAJ
language English
format Article
sources DOAJ
author Meng Lu
Eliakim Hamunyela
Jan Verbesselt
Edzer Pebesma
spellingShingle Meng Lu
Eliakim Hamunyela
Jan Verbesselt
Edzer Pebesma
Dimension Reduction of Multi-Spectral Satellite Image Time Series to Improve Deforestation Monitoring
Remote Sensing
multi-spectral
dimension reduction
deforestation monitor
Landsat time series
author_facet Meng Lu
Eliakim Hamunyela
Jan Verbesselt
Edzer Pebesma
author_sort Meng Lu
title Dimension Reduction of Multi-Spectral Satellite Image Time Series to Improve Deforestation Monitoring
title_short Dimension Reduction of Multi-Spectral Satellite Image Time Series to Improve Deforestation Monitoring
title_full Dimension Reduction of Multi-Spectral Satellite Image Time Series to Improve Deforestation Monitoring
title_fullStr Dimension Reduction of Multi-Spectral Satellite Image Time Series to Improve Deforestation Monitoring
title_full_unstemmed Dimension Reduction of Multi-Spectral Satellite Image Time Series to Improve Deforestation Monitoring
title_sort dimension reduction of multi-spectral satellite image time series to improve deforestation monitoring
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2017-10-01
description In recent years, sequential tests for detecting structural changes in time series have been adapted for deforestation monitoring using satellite data. The input time series of such sequential tests is typically a vegetation index (e.g., NDVI), which uses two or three bands and ignores all other bands. Being limited to a vegetation index will not benefit from the richer spectral information provided by newly launched satellites and will bring two bottle-necks for deforestation monitoring. Firstly, it is hard to select a suitable vegetation index a priori. Secondly, a single vegetation index is typically affected by seasonal signals, noise and other natural dynamics, which decrease its power for deforestation detection. A novel multispectral time series change monitoring method that combines dimension reduction methods with a sequential hypothesis test is proposed to address these limitations. For each location, the proposed method automatically chooses a “suitable” index for deforestation monitoring. To demonstrate our approach, we implemented it in two study areas: a dry tropical forest in Bolivia (time series length: 444) with strong seasonality and a moist tropical forest in Brazil (time series length: 225) with almost no seasonality. Our method significantly improves accuracy in the presence of strong seasonality, in particular the temporal lag between disturbance and its detection.
topic multi-spectral
dimension reduction
deforestation monitor
Landsat time series
url https://www.mdpi.com/2072-4292/9/10/1025
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AT eliakimhamunyela dimensionreductionofmultispectralsatelliteimagetimeseriestoimprovedeforestationmonitoring
AT janverbesselt dimensionreductionofmultispectralsatelliteimagetimeseriestoimprovedeforestationmonitoring
AT edzerpebesma dimensionreductionofmultispectralsatelliteimagetimeseriestoimprovedeforestationmonitoring
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