Automatic Grassland Cutting Status Detection in the Context of Spatiotemporal Sentinel-1 Imagery Analysis and Artificial Neural Networks

Grassland contributes to carbon storage and animal feed production. Its yield is largely determined by the cutting times of grassland. Previous studies have used remote sensing data for grassland biomass estimation, but only a few studies have focused on SAR remote sensing approaches for automatic g...

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Main Authors: Alireza Taravat, Matthias P. Wagner, Natascha Oppelt
Format: Article
Language:English
Published: MDPI AG 2019-03-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/11/6/711
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spelling doaj-ba24a3f4ad6d4975897f572248e365fb2020-11-24T22:28:17ZengMDPI AGRemote Sensing2072-42922019-03-0111671110.3390/rs11060711rs11060711Automatic Grassland Cutting Status Detection in the Context of Spatiotemporal Sentinel-1 Imagery Analysis and Artificial Neural NetworksAlireza Taravat0Matthias P. Wagner1Natascha Oppelt2Earth Observation and Modelling, Dept. of Geography, Kiel University, 24098 Kiel, GermanyEarth Observation and Modelling, Dept. of Geography, Kiel University, 24098 Kiel, GermanyEarth Observation and Modelling, Dept. of Geography, Kiel University, 24098 Kiel, GermanyGrassland contributes to carbon storage and animal feed production. Its yield is largely determined by the cutting times of grassland. Previous studies have used remote sensing data for grassland biomass estimation, but only a few studies have focused on SAR remote sensing approaches for automatic grassland cutting status detection. Due to the occurrence of multiple cuttings in a year, it is crucial to effectively monitor grassland cutting events in order to achieve accurate biomass estimations of a whole season. In this study, we examined the capabilities of multilayer perceptron neural networks for automatic grassland cutting status detection using SAR imagery. The proposed model inputs are a time series dataset of VV and VH Sentinel-1 C-band SAR and second-order texture metrics (homogeneity, entropy, contrast and dissimilarity). The proposed approach has been successfully tested on a dataset collected from several fields in Germany in 2016, with an overall accuracy of 85.71% for the validation set.https://www.mdpi.com/2072-4292/11/6/711machine learningSynthetic Aperture Radar (SAR)grasslandtime seriescutting status
collection DOAJ
language English
format Article
sources DOAJ
author Alireza Taravat
Matthias P. Wagner
Natascha Oppelt
spellingShingle Alireza Taravat
Matthias P. Wagner
Natascha Oppelt
Automatic Grassland Cutting Status Detection in the Context of Spatiotemporal Sentinel-1 Imagery Analysis and Artificial Neural Networks
Remote Sensing
machine learning
Synthetic Aperture Radar (SAR)
grassland
time series
cutting status
author_facet Alireza Taravat
Matthias P. Wagner
Natascha Oppelt
author_sort Alireza Taravat
title Automatic Grassland Cutting Status Detection in the Context of Spatiotemporal Sentinel-1 Imagery Analysis and Artificial Neural Networks
title_short Automatic Grassland Cutting Status Detection in the Context of Spatiotemporal Sentinel-1 Imagery Analysis and Artificial Neural Networks
title_full Automatic Grassland Cutting Status Detection in the Context of Spatiotemporal Sentinel-1 Imagery Analysis and Artificial Neural Networks
title_fullStr Automatic Grassland Cutting Status Detection in the Context of Spatiotemporal Sentinel-1 Imagery Analysis and Artificial Neural Networks
title_full_unstemmed Automatic Grassland Cutting Status Detection in the Context of Spatiotemporal Sentinel-1 Imagery Analysis and Artificial Neural Networks
title_sort automatic grassland cutting status detection in the context of spatiotemporal sentinel-1 imagery analysis and artificial neural networks
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2019-03-01
description Grassland contributes to carbon storage and animal feed production. Its yield is largely determined by the cutting times of grassland. Previous studies have used remote sensing data for grassland biomass estimation, but only a few studies have focused on SAR remote sensing approaches for automatic grassland cutting status detection. Due to the occurrence of multiple cuttings in a year, it is crucial to effectively monitor grassland cutting events in order to achieve accurate biomass estimations of a whole season. In this study, we examined the capabilities of multilayer perceptron neural networks for automatic grassland cutting status detection using SAR imagery. The proposed model inputs are a time series dataset of VV and VH Sentinel-1 C-band SAR and second-order texture metrics (homogeneity, entropy, contrast and dissimilarity). The proposed approach has been successfully tested on a dataset collected from several fields in Germany in 2016, with an overall accuracy of 85.71% for the validation set.
topic machine learning
Synthetic Aperture Radar (SAR)
grassland
time series
cutting status
url https://www.mdpi.com/2072-4292/11/6/711
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