Abstract

Grapevine yellows (GY) are a significant threat to grapes due to the severe symptoms and lack of treatments. Conventional diagnosis of the phytoplasmas associated to GYs relies on symptom identification, due to sensitivity limits of diagnostic tools (e.g. real time PCR) in asymptomatic vines, where the low concentration of the pathogen or its erratic distribution can lead to a high rate of false-negatives. GY’s primary symptoms are leaf discoloration and irregular wood ripening, which can be easily confused for symptoms of other diseases making recognition a difficult task. Herein, we present a novel system, utilizing convolutional neural networks, for end-to-end detection of GY in red grape vine (cv. Sangiovese), using color images of leaf clippings. The diagnostic test detailed in this work does not require the user to be an expert at identifying GY. Data augmentation strategies make the system robust to alignment errors during data capture. When applied to the task of recognizing GY from digital images of leaf clippings—amongst many other diseases and a healthy control—the system has a sensitivity of 98.96% and a specificity of 99.40%. Deep learning has 35.97% and 9.88% better predictive value (PPV) when recognizing GY from sight, than a baseline system without deep learning and trained humans respectively. We evaluate six neural network architectures: AlexNet, GoogLeNet, Inception v3, ResNet-50, ResNet-101 and SqueezeNet. We find ResNet-50 to be the best compromise of accuracy and training cost. The trained neural networks, code to reproduce the experiments, and data of leaf clipping images are available on the internet. This work will advance the frontier of GY detection by improving detection speed, enabling a more effective response to the disease.

Highlights

  • Grapevine yellows (GY) are among the most important diseases currently studied in grapevine

  • The first set of experiments answer the questions: can GY be predicted from leaf clipping images? And, among the many deep learning architectures available, which is best? We answer these questions by providing recognition results for six different network architectures

  • We demonstrate that it possible to detect GY from leaf clipping images, and that certain systems exceed expectations

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Summary

Introduction

Grapevine yellows (GY) are among the most important diseases currently studied in grapevine. FD (Candidatus Phytoplasma vitis) is a member of the Elm Yellows group, (Martini et al, 1999) and BN (Ca. Phytoplasma solani) is a member of the Stolbur group (16SrXII) (Quaglino et al, 2013). Phytoplasma solani) is a member of the Stolbur group (16SrXII) (Quaglino et al, 2013) These are considered the most dangerous phytoplasmas found in all major winegrowing areas of Euro-Mediterranean countries, Chile and Asia (Gajardo et al, 2009; Belli et al, 2010; Mirchenari et al, 2015). In Europe and the Mediterranean basin, the causal agent of FD is classified as quarantine pest. A more efficient strategy to limit phytoplasma disease diffusion is needed

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