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Evaluating the suitability of hyper- and multispectral imaging to detect foliar symptoms of the grapevine trunk disease Esca in vineyards

GND
1173369597
Zugehörigkeit
Julius Kühn-Institute (JKI), Institute for Grapevine Breeding, Germany ; University of Hohenheim, Institute of Phytomedicine, Germany
Bendel, Nele;
GND
1059151588
Zugehörigkeit
Julius Kühn-Institute (JKI), Institute for Grapevine Breeding, Germany
Kicherer, Anna;
Zugehörigkeit
Fraunhofer Institute for Factory Operation and Automation (IFF), Biosystems Engineering, Germany
Backhaus, Andreas;
Zugehörigkeit
Fraunhofer Institute for Factory Operation and Automation (IFF), Biosystems Engineering, Germany
Klück, Hans-Christian;
Zugehörigkeit
Fraunhofer Institute for Factory Operation and Automation (IFF), Biosystems Engineering, Germany
Seiffert, Udo;
GND
105914011X
Zugehörigkeit
Julius Kühn-Institute (JKI), Institute for Plant Protection in Fruit Crops and Viticulture, Germany
Fischer, Michael;
Zugehörigkeit
University of Hohenheim, Institute of Phytomedicine, Germany
Voegele, Ralf T.;
GND
1059151928
Zugehörigkeit
Julius Kühn-Institute (JKI), Institute for Grapevine Breeding, Germany
Töpfer, Reinhard

Background Grapevine trunk diseases (GTDs) such as Esca are among the most devastating threats to viticulture. Due to the lack of efficient preventive and curative treatments, Esca causes severe economic losses worldwide. Since symptoms do not develop consecutively, the true incidence of the disease in a vineyard is difficult to assess. Therefore, an annual monitoring is required. In this context, automatic detection of symptoms could be a great relief for winegrowers. Spectral sensors have proven to be successful in disease detection, allowing a non-destructive, objective, and fast data acquisition. The aim of this study is to evaluate the feasibility of the in-field detection of foliar Esca symptoms over three consecutive years using ground-based hyperspectral and airborne multispectral imaging. Results Hyperspectral disease detection models have been successfully developed using either original field data or manually annotated data. In a next step, these models were applied on plant scale. While the model using annotated data performed better during development, the model using original data showed higher classification accuracies when applied in practical work. Moreover, the transferability of disease detection models to unknown data was tested. Although the visible and near-infrared (VNIR) range showed promising results, the transfer of such models is challenging. Initial results indicate that external symptoms could be detected pre-symptomatically, but this needs further evaluation. Furthermore, an application specific multispectral approach was simulated by identifying the most important wavelengths for the differentiation tasks, which was then compared to real multispectral data. Even though the ground-based multispectral disease detection was successful, airborne detection remains difficult. Conclusions In this study, ground-based hyperspectral and airborne multispectral approaches for the detection of foliar Esca symptoms are presented. Both sensor systems seem to be suitable for the in-field detection of the disease, even though airborne data acquisition has to be further optimized. Our disease detection approaches could facilitate monitoring plant phenotypes in a vineyard.

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Rechteinhaber: The Author(s) 2020

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