Leveraging UAV spectral and thermal traits for the genetic improvement of resistance to Dothistroma needle blight in Pinus radiata D.Don
Joane S. Elleouet, Russell Main, Robin J. L. Hartley, Michael S. Watt

TL;DR
This study uses drone-based imaging to efficiently assess resistance to a tree disease in Pinus radiata, offering a scalable alternative to traditional methods.
Contribution
The study demonstrates that UAV hyperspectral and thermal imaging can replace traditional phenotyping for disease resistance in tree breeding.
Findings
Remote sensing indices showed heritability comparable to visual scores and high correlation with disease severity.
Combining partial visual scoring with NBHIs maintained high breeding value accuracy even at reduced sampling.
Using the most heritable NBHI achieved high breeding value accuracy and strong correlation with severity scores.
Abstract
Phenotyping is critical in tree breeding, but traditional methods are often labour-intensive and not easily scalable. Resistance to biotic and abiotic stress is a key focus in tree breeding programmes. While heritable traits derived from spectral remote sensing have been identified in trees, their application to tree phenotyping remains unexplored. This study investigates in-situ high-throughput hyperspectral and thermal imaging for assessing Dothistroma needle blight (DNB) resistance in Pinus radiata D.Don. Using UAV-based hyperspectral and thermal imaging during a severe DNB outbreak in a clonal trial in New Zealand, we computed narrow-band hyperspectral indices (NBHIs), canopy temperature indices, radiative transfer inverted plant traits, and solar-induced fluorescence. Visual severity scores and remote sensing indices were modelled using spatially explicit mixed-effect linear…
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Taxonomy
TopicsRemote Sensing in Agriculture · Plant and animal studies · Plant Pathogens and Fungal Diseases
