Application of UAV and satellite technologies for assessing phytophthora root rot severity in avocado orchards
Avocado production faces a substantial global threat in the form of Phytophthora root rot (PRR). When trees succumb to PRR, their canopy health deteriorates, leading to adverse impacts on production. To effectively implement remedial strategies, infected trees need to be identified, evaluated, and l...
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Frontiers Media S.A.
2024-12-01
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| Series: | Frontiers in Agronomy |
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| Online Access: | https://www.frontiersin.org/articles/10.3389/fagro.2024.1419479/full |
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| author | S. Duncan A. McLeod C. Poblete-Echeverria |
| author_facet | S. Duncan A. McLeod C. Poblete-Echeverria |
| author_sort | S. Duncan |
| collection | DOAJ |
| description | Avocado production faces a substantial global threat in the form of Phytophthora root rot (PRR). When trees succumb to PRR, their canopy health deteriorates, leading to adverse impacts on production. To effectively implement remedial strategies, infected trees need to be identified, evaluated, and located within the field. The current commercially accepted method for determining PRR severity in canopies consists of a visual estimation using the ‘Ciba-Geigy’ rating scale. This rating scale incorporates a numerical severity ranking system based on a visual approach conducted by trained personnel. However, tracking tree health using visual ratings is a time-consuming process, fraught with practical challenges arising from gradual visual changes, spatial variation, and dimensions of the orchards. To address these limitations, the integration of remote sensor-based methods is proposed as a viable alternative to the visual severity ranking. A field experiment was conducted in two avocado blocks to investigate the effect of spatial resolution, phenological stages, and canopy conditions on the mapping of PRR severity. The results of this study showed that canopy management practices revealed a pronounced influence in the determination of the severity ranking using remote sensing (RS) methods and that these methods can be used as an alternative to visual estimations. Additionally, the spatial resolution of the images emerged as a significant factor, improving the estimation of severity when more detailed spatial data were incorporated into the analysis. In the most favorable scenario, an R2 determination coefficient of 0.80 was achieved. In summary, RS approaches can provide valuable information to mitigate the effect of PRR in avocado production. However, the image characteristics and particular canopy conditions need to be carefully considered in order to deliver a reliable method that can be used for informed decision-making. Nonetheless, the results were promising and could open doors to further investigate RS methods as a subjective and efficient means of PRR severity rankings. |
| format | Article |
| id | doaj-art-aeb9fdafa7554ffab4a69ea5d4135f4f |
| institution | DOAJ |
| issn | 2673-3218 |
| language | English |
| publishDate | 2024-12-01 |
| publisher | Frontiers Media S.A. |
| record_format | Article |
| series | Frontiers in Agronomy |
| spelling | doaj-art-aeb9fdafa7554ffab4a69ea5d4135f4f2025-08-20T02:50:19ZengFrontiers Media S.A.Frontiers in Agronomy2673-32182024-12-01610.3389/fagro.2024.14194791419479Application of UAV and satellite technologies for assessing phytophthora root rot severity in avocado orchardsS. Duncan0A. McLeod1C. Poblete-Echeverria2South African Grape and Wine Research Institute (SAGWRI), Stellenbosch University, Faculty of AgriSciences, Stellenbosch, South AfricaDepartment of Plant Pathology, Stellenbosch University, Stellenbosch, South AfricaSouth African Grape and Wine Research Institute (SAGWRI), Stellenbosch University, Faculty of AgriSciences, Stellenbosch, South AfricaAvocado production faces a substantial global threat in the form of Phytophthora root rot (PRR). When trees succumb to PRR, their canopy health deteriorates, leading to adverse impacts on production. To effectively implement remedial strategies, infected trees need to be identified, evaluated, and located within the field. The current commercially accepted method for determining PRR severity in canopies consists of a visual estimation using the ‘Ciba-Geigy’ rating scale. This rating scale incorporates a numerical severity ranking system based on a visual approach conducted by trained personnel. However, tracking tree health using visual ratings is a time-consuming process, fraught with practical challenges arising from gradual visual changes, spatial variation, and dimensions of the orchards. To address these limitations, the integration of remote sensor-based methods is proposed as a viable alternative to the visual severity ranking. A field experiment was conducted in two avocado blocks to investigate the effect of spatial resolution, phenological stages, and canopy conditions on the mapping of PRR severity. The results of this study showed that canopy management practices revealed a pronounced influence in the determination of the severity ranking using remote sensing (RS) methods and that these methods can be used as an alternative to visual estimations. Additionally, the spatial resolution of the images emerged as a significant factor, improving the estimation of severity when more detailed spatial data were incorporated into the analysis. In the most favorable scenario, an R2 determination coefficient of 0.80 was achieved. In summary, RS approaches can provide valuable information to mitigate the effect of PRR in avocado production. However, the image characteristics and particular canopy conditions need to be carefully considered in order to deliver a reliable method that can be used for informed decision-making. Nonetheless, the results were promising and could open doors to further investigate RS methods as a subjective and efficient means of PRR severity rankings.https://www.frontiersin.org/articles/10.3389/fagro.2024.1419479/fullremote sensingavocadodisease severity detectionRGB imagingplant projective covermultispectral imaging |
| spellingShingle | S. Duncan A. McLeod C. Poblete-Echeverria Application of UAV and satellite technologies for assessing phytophthora root rot severity in avocado orchards Frontiers in Agronomy remote sensing avocado disease severity detection RGB imaging plant projective cover multispectral imaging |
| title | Application of UAV and satellite technologies for assessing phytophthora root rot severity in avocado orchards |
| title_full | Application of UAV and satellite technologies for assessing phytophthora root rot severity in avocado orchards |
| title_fullStr | Application of UAV and satellite technologies for assessing phytophthora root rot severity in avocado orchards |
| title_full_unstemmed | Application of UAV and satellite technologies for assessing phytophthora root rot severity in avocado orchards |
| title_short | Application of UAV and satellite technologies for assessing phytophthora root rot severity in avocado orchards |
| title_sort | application of uav and satellite technologies for assessing phytophthora root rot severity in avocado orchards |
| topic | remote sensing avocado disease severity detection RGB imaging plant projective cover multispectral imaging |
| url | https://www.frontiersin.org/articles/10.3389/fagro.2024.1419479/full |
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