Outlier Detection at the Parcel-Level in Wheat and Rapeseed Crops Using Multispectral and SAR Time Series

This paper studies the detection of anomalous crop development at the parcel-level based on an unsupervised outlier detection technique. The experimental validation is conducted on rapeseed and wheat parcels located in Beauce (France). The proposed methodology consists of four sequential steps: (1)...

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Main Authors: Florian Mouret, Mohanad Albughdadi, Sylvie Duthoit, Denis Kouamé, Guillaume Rieu, Jean-Yves Tourneret
Format: Article
Language:English
Published: MDPI AG 2021-03-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/13/5/956
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spelling doaj-5cddbbba53384e519ae1e1d8aaeb161d2021-03-05T00:02:03ZengMDPI AGRemote Sensing2072-42922021-03-011395695610.3390/rs13050956Outlier Detection at the Parcel-Level in Wheat and Rapeseed Crops Using Multispectral and SAR Time SeriesFlorian Mouret0Mohanad Albughdadi1Sylvie Duthoit2Denis Kouamé3Guillaume Rieu4Jean-Yves Tourneret5TerraNIS, 12 Avenue de l’Europe, 31520 Ramonville-Saint-Agne, FranceTerraNIS, 12 Avenue de l’Europe, 31520 Ramonville-Saint-Agne, FranceTerraNIS, 12 Avenue de l’Europe, 31520 Ramonville-Saint-Agne, FranceIRIT/UPS, University of Toulouse, 118 Route de Narbonne, 31062 Toulouse CEDEX 9, FranceTerraNIS, 12 Avenue de l’Europe, 31520 Ramonville-Saint-Agne, FranceIRIT/TéSA/INP-ENSEEIHT, University of Toulouse, 2 Rue Charles Camichel, 31000 Toulouse, FranceThis paper studies the detection of anomalous crop development at the parcel-level based on an unsupervised outlier detection technique. The experimental validation is conducted on rapeseed and wheat parcels located in Beauce (France). The proposed methodology consists of four sequential steps: (1) preprocessing of synthetic aperture radar (SAR) and multispectral images acquired using Sentinel-1 and Sentinel-2 satellites, (2) extraction of SAR and multispectral pixel-level features, (3) computation of parcel-level features using zonal statistics and (4) outlier detection. The different types of anomalies that can affect the studied crops are analyzed and described. The different factors that can influence the outlier detection results are investigated with a particular attention devoted to the synergy between Sentinel-1 and Sentinel-2 data. Overall, the best performance is obtained when using jointly a selection of Sentinel-1 and Sentinel-2 features with the isolation forest algorithm. The selected features are co-polarized (VV) and cross-polarized (VH) backscattering coefficients for Sentinel-1 and five Vegetation Indexes for Sentinel-2 (among us, the Normalized Difference Vegetation Index and two variants of the Normalized Difference Water). When using these features with an outlier ratio of 10%, the percentage of detected true positives (i.e., crop anomalies) is equal to 94.1% for rapeseed parcels and 95.5% for wheat parcels.https://www.mdpi.com/2072-4292/13/5/956crop monitoringSentinel-1Sentinel-2isolation forestanomaly detectionunsupervised
collection DOAJ
language English
format Article
sources DOAJ
author Florian Mouret
Mohanad Albughdadi
Sylvie Duthoit
Denis Kouamé
Guillaume Rieu
Jean-Yves Tourneret
spellingShingle Florian Mouret
Mohanad Albughdadi
Sylvie Duthoit
Denis Kouamé
Guillaume Rieu
Jean-Yves Tourneret
Outlier Detection at the Parcel-Level in Wheat and Rapeseed Crops Using Multispectral and SAR Time Series
Remote Sensing
crop monitoring
Sentinel-1
Sentinel-2
isolation forest
anomaly detection
unsupervised
author_facet Florian Mouret
Mohanad Albughdadi
Sylvie Duthoit
Denis Kouamé
Guillaume Rieu
Jean-Yves Tourneret
author_sort Florian Mouret
title Outlier Detection at the Parcel-Level in Wheat and Rapeseed Crops Using Multispectral and SAR Time Series
title_short Outlier Detection at the Parcel-Level in Wheat and Rapeseed Crops Using Multispectral and SAR Time Series
title_full Outlier Detection at the Parcel-Level in Wheat and Rapeseed Crops Using Multispectral and SAR Time Series
title_fullStr Outlier Detection at the Parcel-Level in Wheat and Rapeseed Crops Using Multispectral and SAR Time Series
title_full_unstemmed Outlier Detection at the Parcel-Level in Wheat and Rapeseed Crops Using Multispectral and SAR Time Series
title_sort outlier detection at the parcel-level in wheat and rapeseed crops using multispectral and sar time series
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2021-03-01
description This paper studies the detection of anomalous crop development at the parcel-level based on an unsupervised outlier detection technique. The experimental validation is conducted on rapeseed and wheat parcels located in Beauce (France). The proposed methodology consists of four sequential steps: (1) preprocessing of synthetic aperture radar (SAR) and multispectral images acquired using Sentinel-1 and Sentinel-2 satellites, (2) extraction of SAR and multispectral pixel-level features, (3) computation of parcel-level features using zonal statistics and (4) outlier detection. The different types of anomalies that can affect the studied crops are analyzed and described. The different factors that can influence the outlier detection results are investigated with a particular attention devoted to the synergy between Sentinel-1 and Sentinel-2 data. Overall, the best performance is obtained when using jointly a selection of Sentinel-1 and Sentinel-2 features with the isolation forest algorithm. The selected features are co-polarized (VV) and cross-polarized (VH) backscattering coefficients for Sentinel-1 and five Vegetation Indexes for Sentinel-2 (among us, the Normalized Difference Vegetation Index and two variants of the Normalized Difference Water). When using these features with an outlier ratio of 10%, the percentage of detected true positives (i.e., crop anomalies) is equal to 94.1% for rapeseed parcels and 95.5% for wheat parcels.
topic crop monitoring
Sentinel-1
Sentinel-2
isolation forest
anomaly detection
unsupervised
url https://www.mdpi.com/2072-4292/13/5/956
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