Synergistic use of Sentinel-1 and Sentinel-2 data for Fall Armyworm infestation detection and mapping in maize croplands

Fall Armyworm (FAW) is a widespread invasive pest in maize crops. This study aimed at detecting and mapping FAW infestations in maize fields across Bangladesh, using freely available Sentinel-1 and Sentinel-2 data. Field observations were conducted during the 2019-2020 maize growing season in 579 ma...

Descripción completa

Detalles Bibliográficos
Autores principales: Dzurume, Tatenda, Darvishzadeh, Roshanak, Dube, Timothy, Amjath-Babu, T.S., Billah, Mutasim, Syed Nurul Alam, Kamal, Mustafa, Harun-Or-Rashid, Md., Biswas, Badal Chandra, Uddin, Md. Ashraf, Md. Abdul Muyeed, Rahman Shah, Md Mostafizur, Krupnik, Timothy Joseph, Nelson, Andrew
Formato: Journal Article
Lenguaje:Inglés
Publicado: Taylor and Francis Ltd. 2025
Materias:
Acceso en línea:https://hdl.handle.net/10568/178394
_version_ 1855533676763283456
author Dzurume, Tatenda
Darvishzadeh, Roshanak
Dube, Timothy
Amjath-Babu, T.S.
Billah, Mutasim
Syed Nurul Alam
Kamal, Mustafa
Harun-Or-Rashid, Md.
Biswas, Badal Chandra
Uddin, Md. Ashraf
Md. Abdul Muyeed
Rahman Shah, Md Mostafizur
Krupnik, Timothy Joseph
Nelson, Andrew
author_browse Amjath-Babu, T.S.
Billah, Mutasim
Biswas, Badal Chandra
Darvishzadeh, Roshanak
Dube, Timothy
Dzurume, Tatenda
Harun-Or-Rashid, Md.
Kamal, Mustafa
Krupnik, Timothy Joseph
Md. Abdul Muyeed
Nelson, Andrew
Rahman Shah, Md Mostafizur
Syed Nurul Alam
Uddin, Md. Ashraf
author_facet Dzurume, Tatenda
Darvishzadeh, Roshanak
Dube, Timothy
Amjath-Babu, T.S.
Billah, Mutasim
Syed Nurul Alam
Kamal, Mustafa
Harun-Or-Rashid, Md.
Biswas, Badal Chandra
Uddin, Md. Ashraf
Md. Abdul Muyeed
Rahman Shah, Md Mostafizur
Krupnik, Timothy Joseph
Nelson, Andrew
author_sort Dzurume, Tatenda
collection Repository of Agricultural Research Outputs (CGSpace)
description Fall Armyworm (FAW) is a widespread invasive pest in maize crops. This study aimed at detecting and mapping FAW infestations in maize fields across Bangladesh, using freely available Sentinel-1 and Sentinel-2 data. Field observations were conducted during the 2019-2020 maize growing season in 579 maize fields across six administrative divisions of Bangladesh. The study covered both infested and non-infested sites across four crop growth phases, namely vegetative phases 9 (V9) and 12 (V12), as well as the silking and maturing phases. Synthetic Aperture Radar backscatter values, spectral reflectance profiles, and eight vegetation indices were extracted from the Sentinel data and analysed using non-parametric statistical tests to identify differences between infested and non-infested fields. Machine learning models, specifically Random Forest - and Support Vector Machine, were then used to classify infestation severity based on five model input data combinations: (i) Sentinel-1, (ii) Sentinel-2, (iii) Sentinel-2 with vegetation indices, (iv) Sentinel-1 and Sentinel-2, and (v) Sentinel-1, Sentinel-2, and vegetation indices. The results indicated that infested maize fields exhibited reduced near-infrared reflectance and distinct backscatter patterns in sigma VHo, with notable variations at silking and maturity phases. The red edge (740 nm), near-infrared (865 nm) and shortwave infrared (1610-2190 nm) bands were particularly effective in distinguishing infestation levels across all growing phases. Among the studied vegetation indices, the Normalized Difference Vegetation Index , Modified Chlorophyll Absorption in Reflectance Index, Red Edge Simple Ratio, and Modified Simple Ratio - were identified as the most significant indicators for discriminating between non-infested and infested maize classes at all growing phases. RF achieved 94-96% accuracy (96% in V9) versus SVM's 78-80% using only Sentinel-1 data. Multi-source (Sentinel-1, Sentinel-2 and Vegetation Indices) integration improved both models in most cases. These results underscore the potential of integrating multi-source remote sensing data for scalable and accurate pest detection. Freely available Sentinel data is a valuable source of information for early pest detection and management aiding policymakers in identifying high-risk areas, implementing timely interventions, and promoting sustainable pest management strategies to protect maize production and reduce economic losses.
format Journal Article
id CGSpace178394
institution CGIAR Consortium
language Inglés
publishDate 2025
publishDateRange 2025
publishDateSort 2025
publisher Taylor and Francis Ltd.
publisherStr Taylor and Francis Ltd.
record_format dspace
spelling CGSpace1783942025-12-01T02:11:39Z Synergistic use of Sentinel-1 and Sentinel-2 data for Fall Armyworm infestation detection and mapping in maize croplands Dzurume, Tatenda Darvishzadeh, Roshanak Dube, Timothy Amjath-Babu, T.S. Billah, Mutasim Syed Nurul Alam Kamal, Mustafa Harun-Or-Rashid, Md. Biswas, Badal Chandra Uddin, Md. Ashraf Md. Abdul Muyeed Rahman Shah, Md Mostafizur Krupnik, Timothy Joseph Nelson, Andrew fall armyworms synthetic aperture radar structural adjustment maize pest management Fall Armyworm (FAW) is a widespread invasive pest in maize crops. This study aimed at detecting and mapping FAW infestations in maize fields across Bangladesh, using freely available Sentinel-1 and Sentinel-2 data. Field observations were conducted during the 2019-2020 maize growing season in 579 maize fields across six administrative divisions of Bangladesh. The study covered both infested and non-infested sites across four crop growth phases, namely vegetative phases 9 (V9) and 12 (V12), as well as the silking and maturing phases. Synthetic Aperture Radar backscatter values, spectral reflectance profiles, and eight vegetation indices were extracted from the Sentinel data and analysed using non-parametric statistical tests to identify differences between infested and non-infested fields. Machine learning models, specifically Random Forest - and Support Vector Machine, were then used to classify infestation severity based on five model input data combinations: (i) Sentinel-1, (ii) Sentinel-2, (iii) Sentinel-2 with vegetation indices, (iv) Sentinel-1 and Sentinel-2, and (v) Sentinel-1, Sentinel-2, and vegetation indices. The results indicated that infested maize fields exhibited reduced near-infrared reflectance and distinct backscatter patterns in sigma VHo, with notable variations at silking and maturity phases. The red edge (740 nm), near-infrared (865 nm) and shortwave infrared (1610-2190 nm) bands were particularly effective in distinguishing infestation levels across all growing phases. Among the studied vegetation indices, the Normalized Difference Vegetation Index , Modified Chlorophyll Absorption in Reflectance Index, Red Edge Simple Ratio, and Modified Simple Ratio - were identified as the most significant indicators for discriminating between non-infested and infested maize classes at all growing phases. RF achieved 94-96% accuracy (96% in V9) versus SVM's 78-80% using only Sentinel-1 data. Multi-source (Sentinel-1, Sentinel-2 and Vegetation Indices) integration improved both models in most cases. These results underscore the potential of integrating multi-source remote sensing data for scalable and accurate pest detection. Freely available Sentinel data is a valuable source of information for early pest detection and management aiding policymakers in identifying high-risk areas, implementing timely interventions, and promoting sustainable pest management strategies to protect maize production and reduce economic losses. 2025-09 2025-11-30T21:15:08Z 2025-11-30T21:15:08Z Journal Article https://hdl.handle.net/10568/178394 en Open Access application/pdf Taylor and Francis Ltd. Dzurume, T., Darvishzadeh, R., Dube, T., Babu, T. A., Billah, M., Alam, S. N., Kamal, M., Harun-Or-Rashid, M., Biswas, B. C., Uddin, M. A., Muyeed, M. A., Shah, M. M. R., Krupnik, T. J., & Nelson, A. (2025). Synergistic use of Sentinel-1 and Sentinel-2 data for Fall Armyworm infestation detection and mapping in maize croplands. International Journal of Remote Sensing, 46(19), 7044-7076. https://doi.org/10.1080/01431161.2025.2546155
spellingShingle fall armyworms
synthetic aperture radar
structural adjustment
maize
pest management
Dzurume, Tatenda
Darvishzadeh, Roshanak
Dube, Timothy
Amjath-Babu, T.S.
Billah, Mutasim
Syed Nurul Alam
Kamal, Mustafa
Harun-Or-Rashid, Md.
Biswas, Badal Chandra
Uddin, Md. Ashraf
Md. Abdul Muyeed
Rahman Shah, Md Mostafizur
Krupnik, Timothy Joseph
Nelson, Andrew
Synergistic use of Sentinel-1 and Sentinel-2 data for Fall Armyworm infestation detection and mapping in maize croplands
title Synergistic use of Sentinel-1 and Sentinel-2 data for Fall Armyworm infestation detection and mapping in maize croplands
title_full Synergistic use of Sentinel-1 and Sentinel-2 data for Fall Armyworm infestation detection and mapping in maize croplands
title_fullStr Synergistic use of Sentinel-1 and Sentinel-2 data for Fall Armyworm infestation detection and mapping in maize croplands
title_full_unstemmed Synergistic use of Sentinel-1 and Sentinel-2 data for Fall Armyworm infestation detection and mapping in maize croplands
title_short Synergistic use of Sentinel-1 and Sentinel-2 data for Fall Armyworm infestation detection and mapping in maize croplands
title_sort synergistic use of sentinel 1 and sentinel 2 data for fall armyworm infestation detection and mapping in maize croplands
topic fall armyworms
synthetic aperture radar
structural adjustment
maize
pest management
url https://hdl.handle.net/10568/178394
work_keys_str_mv AT dzurumetatenda synergisticuseofsentinel1andsentinel2dataforfallarmyworminfestationdetectionandmappinginmaizecroplands
AT darvishzadehroshanak synergisticuseofsentinel1andsentinel2dataforfallarmyworminfestationdetectionandmappinginmaizecroplands
AT dubetimothy synergisticuseofsentinel1andsentinel2dataforfallarmyworminfestationdetectionandmappinginmaizecroplands
AT amjathbabuts synergisticuseofsentinel1andsentinel2dataforfallarmyworminfestationdetectionandmappinginmaizecroplands
AT billahmutasim synergisticuseofsentinel1andsentinel2dataforfallarmyworminfestationdetectionandmappinginmaizecroplands
AT syednurulalam synergisticuseofsentinel1andsentinel2dataforfallarmyworminfestationdetectionandmappinginmaizecroplands
AT kamalmustafa synergisticuseofsentinel1andsentinel2dataforfallarmyworminfestationdetectionandmappinginmaizecroplands
AT harunorrashidmd synergisticuseofsentinel1andsentinel2dataforfallarmyworminfestationdetectionandmappinginmaizecroplands
AT biswasbadalchandra synergisticuseofsentinel1andsentinel2dataforfallarmyworminfestationdetectionandmappinginmaizecroplands
AT uddinmdashraf synergisticuseofsentinel1andsentinel2dataforfallarmyworminfestationdetectionandmappinginmaizecroplands
AT mdabdulmuyeed synergisticuseofsentinel1andsentinel2dataforfallarmyworminfestationdetectionandmappinginmaizecroplands
AT rahmanshahmdmostafizur synergisticuseofsentinel1andsentinel2dataforfallarmyworminfestationdetectionandmappinginmaizecroplands
AT krupniktimothyjoseph synergisticuseofsentinel1andsentinel2dataforfallarmyworminfestationdetectionandmappinginmaizecroplands
AT nelsonandrew synergisticuseofsentinel1andsentinel2dataforfallarmyworminfestationdetectionandmappinginmaizecroplands