Abstract

Washington State produces about 70% of total fresh market apples in the United States. One of the primary goals of apple breeding programs is the development of new cultivars resistant to devastating diseases such as fire blight. The overall objective of this study was to investigate high-throughput phenotyping techniques to evaluate fire blight disease symptoms in apple trees. In this regard, normalized stomatal conductance data acquired using a portable photosynthetic system, image data collected using RGB and multispectral cameras, and visible-near infrared spectral reflectance acquired using a hyperspectral sensing system, were independently evaluated to estimate the progression of fire blight infection in young apple trees. Sensors with ranging complexity – from simple RGB to multispectral imaging to hyperspectral system – were evaluated to select the most accurate technique for the assessment of fire blight disease symptoms. The proximal multispectral images and visible-near infrared spectral reflectance data were collected in two field seasons (2016, 2017); while, proximal side-view RGB images and multispectral images using unmanned aerial systems were collected in 2017. The normalized stomatal conductance data was correlated with disease severity rating (r = 0.51, P < 0.05). The features extracted from RGB images (e.g., maximum length of senesced leaves, area of senesced leaves, ratio between senesced and healthy leaf area) and multispectral images (e.g., vegetation indices) also demonstrated potential in evaluation of disease rating (|r| > 0.35, P < 0.05). The average classification accuracy achieved using visible-near infrared spectral reflectance data during the classification of susceptible from symptomless groups ranged between 71 and 93% using partial least square regression and quadratic support vector machine. In addition, fire blight disease ratings were compared with normalized difference spectral indices (NDSIs) that were generated from visible-near infrared reflectance spectra. The selected spectral bands in the range 710–2,340 nm used for computing NDSIs showed consistently higher correlation with disease severity rating than data acquired from RGB and multispectral imaging sensors across multiple seasons. In summary, these specific spectral bands can be used for evaluating fire blight disease severity in apple breeding programs and potentially as early fire blight disease detection tool to assist in production systems.

Highlights

  • Apple (Malus pumila Mill) belongs to the Rosaceae family, and is the most consumed and valued fruit crop in the United States (Lu and Lu, 2017) and other parts of the world

  • The absence of higher spectral resolution in the process of disease severity evaluation in breeding programs can limit the application of these sensing systems

  • Hyperspectral sensing system can capture disease-specific responses that can be useful for disease severity evaluations

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Summary

Introduction

Apple (Malus pumila Mill) belongs to the Rosaceae family, and is the most consumed and valued fruit crop in the United States (Lu and Lu, 2017) and other parts of the world. The United States is the second largest apple producer worldwide and Washington State has the nation’s top apple production area. Washington State’s favorable climate with low humidity assists in the control of many of the typical apple diseases (Sutton, 1996). Fire blight is a major concern to commercial fruit production, as it results in significant production losses (Sutton, 1996; Salm and Geider, 2004). The causative agent of fire blight, Erwinia amylovora (Bereswill et al, 1995) can infect flowers, fruits, shoots, and the rootstock of the tree, potentially causing flower, tissue, and/or tree death (Norelli et al, 2003). E. amylovora uses wounds or natural openings as well as nectarthodes to enter the host (Vanneste, 2000)

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