Detection of Xylella fastidiosa infection symptoms with airborne multispectral and thermal imagery: Assessing bandset reduction performance from hyperspectral analysis
Xylella fastidiosa (Xf) is a harmful plant pathogenic bacterium, able to infect over 500 plant species worldwide. Successful eradication and containment strategies for harmful pathogens require large-scale monitoring techniques for the detection of infected hosts, even when they do not display visual symptoms. Although a previous study using airborne hyperspectral and thermal imagery has shown promising results for the early detection of Xf-infected olive (Olea europaea) trees, further work is needed when adopting these techniques for large scale monitoring using multispectral cameras on board airborne platforms and satellites. We used hyperspectral and thermal imagery collected during a two-year airborne campaign in a Xf-infected area in southern Italy to assess the performance of spectrally constrained machine-learning algorithms for this task. The algorithms were used to assess multispectral bandsets, selected from the original hyperspectral imagery, that were compatible with large-scale monitoring from unmanned platforms and manned aircraft. In addition, the contribution of solar–induced chlorophyll fluorescence (SIF) and the temperature-based Crop Water Stress Index (CWSI) retrieved from hyperspectral and thermal imaging, respectively, were evaluated to quantify their relative importance in the algorithms used to detect Xf infection. The detection performance using support vector machine algorithms decreased from ∼80% (kappa, κ = 0.42) when using the original full hyperspectral dataset including SIF and CWSI to ∼74% (κ = 0.36) when the optimal set of six spectral bands most sensitive to Xf infection were used in addition to the CWSI thermal indicator. When neither SIF nor CWSI were used, the detection yielded less than 70% accuracy (decreasing κ to very low performance, 0.29), revealing that tree temperature was more important than chlorophyll fluorescence for the Xf detection. This work demonstrates that large-scale Xf monitoring can be supported using airborne platforms carrying multispectral and thermal cameras with a limited number of spectral bands (e.g., six to 12 bands with 10 nm bandwidths) as long as they are carefully selected by their sensitivity to the Xf symptoms. More precisely, the blue (bands between 400 and 450 nm to derive the NPQI index) and thermal (to derive CWSI from tree temperature) were the most critical spectral regions for their sensitivity to Xf symptoms in olive.
Main Authors: | , , , , , , , , |
---|---|
Other Authors: | |
Format: | artículo biblioteca |
Published: |
Elsevier
2020-04
|
Subjects: | Hyperspectral, Multispectral, Thermal, Radiative transfer, Xylella fastidiosa, Airborne, Machine learning, |
Online Access: | http://hdl.handle.net/10261/227561 http://dx.doi.org/10.13039/501100000780 http://dx.doi.org/10.13039/501100001317 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
id |
dig-ias-es-10261-227561 |
---|---|
record_format |
koha |
institution |
IAS ES |
collection |
DSpace |
country |
España |
countrycode |
ES |
component |
Bibliográfico |
access |
En linea |
databasecode |
dig-ias-es |
tag |
biblioteca |
region |
Europa del Sur |
libraryname |
Biblioteca del IAS España |
topic |
Hyperspectral Multispectral Thermal Radiative transfer Xylella fastidiosa Airborne Machine learning Hyperspectral Multispectral Thermal Radiative transfer Xylella fastidiosa Airborne Machine learning |
spellingShingle |
Hyperspectral Multispectral Thermal Radiative transfer Xylella fastidiosa Airborne Machine learning Hyperspectral Multispectral Thermal Radiative transfer Xylella fastidiosa Airborne Machine learning Poblete, Tomás Camino, Carlos Beck, P. S. A. Hornero, Alberto Kattenborn, Teja Saponari, Maria Boscia, Donato Navas Cortés, Juan Antonio Zarco-Tejada, Pablo J. Detection of Xylella fastidiosa infection symptoms with airborne multispectral and thermal imagery: Assessing bandset reduction performance from hyperspectral analysis |
description |
Xylella fastidiosa (Xf) is a harmful plant pathogenic bacterium, able to infect over 500 plant species worldwide. Successful eradication and containment strategies for harmful pathogens require large-scale monitoring techniques for the detection of infected hosts, even when they do not display visual symptoms. Although a previous study using airborne hyperspectral and thermal imagery has shown promising results for the early detection of Xf-infected olive (Olea europaea) trees, further work is needed when adopting these techniques for large scale monitoring using multispectral cameras on board airborne platforms and satellites. We used hyperspectral and thermal imagery collected during a two-year airborne campaign in a Xf-infected area in southern Italy to assess the performance of spectrally constrained machine-learning algorithms for this task. The algorithms were used to assess multispectral bandsets, selected from the original hyperspectral imagery, that were compatible with large-scale monitoring from unmanned platforms and manned aircraft. In addition, the contribution of solar–induced chlorophyll fluorescence (SIF) and the temperature-based Crop Water Stress Index (CWSI) retrieved from hyperspectral and thermal imaging, respectively, were evaluated to quantify their relative importance in the algorithms used to detect Xf infection. The detection performance using support vector machine algorithms decreased from ∼80% (kappa, κ = 0.42) when using the original full hyperspectral dataset including SIF and CWSI to ∼74% (κ = 0.36) when the optimal set of six spectral bands most sensitive to Xf infection were used in addition to the CWSI thermal indicator. When neither SIF nor CWSI were used, the detection yielded less than 70% accuracy (decreasing κ to very low performance, 0.29), revealing that tree temperature was more important than chlorophyll fluorescence for the Xf detection. This work demonstrates that large-scale Xf monitoring can be supported using airborne platforms carrying multispectral and thermal cameras with a limited number of spectral bands (e.g., six to 12 bands with 10 nm bandwidths) as long as they are carefully selected by their sensitivity to the Xf symptoms. More precisely, the blue (bands between 400 and 450 nm to derive the NPQI index) and thermal (to derive CWSI from tree temperature) were the most critical spectral regions for their sensitivity to Xf symptoms in olive. |
author2 |
European Commission |
author_facet |
European Commission Poblete, Tomás Camino, Carlos Beck, P. S. A. Hornero, Alberto Kattenborn, Teja Saponari, Maria Boscia, Donato Navas Cortés, Juan Antonio Zarco-Tejada, Pablo J. |
format |
artículo |
topic_facet |
Hyperspectral Multispectral Thermal Radiative transfer Xylella fastidiosa Airborne Machine learning |
author |
Poblete, Tomás Camino, Carlos Beck, P. S. A. Hornero, Alberto Kattenborn, Teja Saponari, Maria Boscia, Donato Navas Cortés, Juan Antonio Zarco-Tejada, Pablo J. |
author_sort |
Poblete, Tomás |
title |
Detection of Xylella fastidiosa infection symptoms with airborne multispectral and thermal imagery: Assessing bandset reduction performance from hyperspectral analysis |
title_short |
Detection of Xylella fastidiosa infection symptoms with airborne multispectral and thermal imagery: Assessing bandset reduction performance from hyperspectral analysis |
title_full |
Detection of Xylella fastidiosa infection symptoms with airborne multispectral and thermal imagery: Assessing bandset reduction performance from hyperspectral analysis |
title_fullStr |
Detection of Xylella fastidiosa infection symptoms with airborne multispectral and thermal imagery: Assessing bandset reduction performance from hyperspectral analysis |
title_full_unstemmed |
Detection of Xylella fastidiosa infection symptoms with airborne multispectral and thermal imagery: Assessing bandset reduction performance from hyperspectral analysis |
title_sort |
detection of xylella fastidiosa infection symptoms with airborne multispectral and thermal imagery: assessing bandset reduction performance from hyperspectral analysis |
publisher |
Elsevier |
publishDate |
2020-04 |
url |
http://hdl.handle.net/10261/227561 http://dx.doi.org/10.13039/501100000780 http://dx.doi.org/10.13039/501100001317 |
work_keys_str_mv |
AT pobletetomas detectionofxylellafastidiosainfectionsymptomswithairbornemultispectralandthermalimageryassessingbandsetreductionperformancefromhyperspectralanalysis AT caminocarlos detectionofxylellafastidiosainfectionsymptomswithairbornemultispectralandthermalimageryassessingbandsetreductionperformancefromhyperspectralanalysis AT beckpsa detectionofxylellafastidiosainfectionsymptomswithairbornemultispectralandthermalimageryassessingbandsetreductionperformancefromhyperspectralanalysis AT horneroalberto detectionofxylellafastidiosainfectionsymptomswithairbornemultispectralandthermalimageryassessingbandsetreductionperformancefromhyperspectralanalysis AT kattenbornteja detectionofxylellafastidiosainfectionsymptomswithairbornemultispectralandthermalimageryassessingbandsetreductionperformancefromhyperspectralanalysis AT saponarimaria detectionofxylellafastidiosainfectionsymptomswithairbornemultispectralandthermalimageryassessingbandsetreductionperformancefromhyperspectralanalysis AT bosciadonato detectionofxylellafastidiosainfectionsymptomswithairbornemultispectralandthermalimageryassessingbandsetreductionperformancefromhyperspectralanalysis AT navascortesjuanantonio detectionofxylellafastidiosainfectionsymptomswithairbornemultispectralandthermalimageryassessingbandsetreductionperformancefromhyperspectralanalysis AT zarcotejadapabloj detectionofxylellafastidiosainfectionsymptomswithairbornemultispectralandthermalimageryassessingbandsetreductionperformancefromhyperspectralanalysis |
_version_ |
1777663290876362752 |
spelling |
dig-ias-es-10261-2275612022-05-05T11:16:26Z Detection of Xylella fastidiosa infection symptoms with airborne multispectral and thermal imagery: Assessing bandset reduction performance from hyperspectral analysis Poblete, Tomás Camino, Carlos Beck, P. S. A. Hornero, Alberto Kattenborn, Teja Saponari, Maria Boscia, Donato Navas Cortés, Juan Antonio Zarco-Tejada, Pablo J. European Commission Swansea University Hyperspectral Multispectral Thermal Radiative transfer Xylella fastidiosa Airborne Machine learning Xylella fastidiosa (Xf) is a harmful plant pathogenic bacterium, able to infect over 500 plant species worldwide. Successful eradication and containment strategies for harmful pathogens require large-scale monitoring techniques for the detection of infected hosts, even when they do not display visual symptoms. Although a previous study using airborne hyperspectral and thermal imagery has shown promising results for the early detection of Xf-infected olive (Olea europaea) trees, further work is needed when adopting these techniques for large scale monitoring using multispectral cameras on board airborne platforms and satellites. We used hyperspectral and thermal imagery collected during a two-year airborne campaign in a Xf-infected area in southern Italy to assess the performance of spectrally constrained machine-learning algorithms for this task. The algorithms were used to assess multispectral bandsets, selected from the original hyperspectral imagery, that were compatible with large-scale monitoring from unmanned platforms and manned aircraft. In addition, the contribution of solar–induced chlorophyll fluorescence (SIF) and the temperature-based Crop Water Stress Index (CWSI) retrieved from hyperspectral and thermal imaging, respectively, were evaluated to quantify their relative importance in the algorithms used to detect Xf infection. The detection performance using support vector machine algorithms decreased from ∼80% (kappa, κ = 0.42) when using the original full hyperspectral dataset including SIF and CWSI to ∼74% (κ = 0.36) when the optimal set of six spectral bands most sensitive to Xf infection were used in addition to the CWSI thermal indicator. When neither SIF nor CWSI were used, the detection yielded less than 70% accuracy (decreasing κ to very low performance, 0.29), revealing that tree temperature was more important than chlorophyll fluorescence for the Xf detection. This work demonstrates that large-scale Xf monitoring can be supported using airborne platforms carrying multispectral and thermal cameras with a limited number of spectral bands (e.g., six to 12 bands with 10 nm bandwidths) as long as they are carefully selected by their sensitivity to the Xf symptoms. More precisely, the blue (bands between 400 and 450 nm to derive the NPQI index) and thermal (to derive CWSI from tree temperature) were the most critical spectral regions for their sensitivity to Xf symptoms in olive. Data collection was partially supported by the European Union’s Horizon 2020 research and innovation program through grants to the POnTE (Pest Organisms threatening Europe; grant 635646 from European Union’s Horizon 2020 Framework Research Programme) and XF-ACTORS (Xylella fastidiosa Active Containment Through a Multidisciplinary-Oriented Research Strategy; grant 727987 from European Union’s Horizon 2020 Framework Research Programme) projects. A. Hornero was supported by a research fellowship DTC GEO 29 “Detection of global photosynthesis and forest health from space” from the Science Doctoral Training Centre (Swansea University, UK). 2021-01-26T12:20:04Z 2021-01-26T12:20:04Z 2020-04 2021-01-26T12:20:05Z artículo http://purl.org/coar/resource_type/c_6501 doi: 10.1016/j.isprsjprs.2020.02.010 issn: 0924-2716 ISPRS Journal of Photogrammetry and Remote Sensing 162: 27-40 (2020) http://hdl.handle.net/10261/227561 10.1016/j.isprsjprs.2020.02.010 http://dx.doi.org/10.13039/501100000780 http://dx.doi.org/10.13039/501100001317 #PLACEHOLDER_PARENT_METADATA_VALUE# #PLACEHOLDER_PARENT_METADATA_VALUE# info:eu-repo/grantAgreement/EC/H2020/635646 info:eu-repo/grantAgreement/EC/H2020/727987 Postprint http://doi.org/10.1016/j.isprsjprs.2020.02.010 Sí open Elsevier |