Automatic scoring of Rhizoctonia crown and root rot affected sugar beet fields from orthorectified UAV images using Machine Learning

Author:

Ispizua Yamati Facundo Ramón1,Günder Maurice2,Barreto Alcántara Abel Andree3,Bömer Jonas4,Laufer Daniel3,Bauckhage Christian2,Mahlein Anne-Katrin1

Affiliation:

1. Institute of Sugar Beet Research, 551805, Göttingen, Lower Saxony, Germany;

2. University of Bonn, 9374, Institute for Computer Science III, Bonn, Nordrhein-Westfalen, Germany;

3. Institute of Sugar Beet Research, 551805, Gottingen, Lower Saxony, Germany;

4. Institute of Sugar Beet Research, 551805, Göttingen, Lower Saxony, Germany, ;

Abstract

Rhizoctonia crown and root rot (RCRR), caused by Rhizoctonia solani, can cause severe yield and quality losses in sugar beet. The most common strategy to control the disease is the development of resistant varieties. In the breeding process, field experiments with artificial inoculation are carried out to evaluate the performance of genotypes and varieties. The phenotyping process in breeding trials requires constant monitoring and scoring by skilled experts. This work is time demanding and shows bias and heterogeneity according to the experience and capacity of each individual person. Optical sensors and artificial intelligence have demonstrated a great potential to achieve higher accuracy than human raters and the possibility to standardize phenotyping applications. A workflow combining red-green-blue (RGB) and multispectral imagery coupled to an unmanned aerial vehicle (UAV), and machine learning techniques was applied to score diseased plants and plots affected by RCRR. Georeferenced annotation of UAV orthorectified images. With the annotated images, five convolutional neural networks were trained to score individual plants. The training was carried out with different image analysis strategies and data augmentation, respectively. The custom convolutional neural network trained from scratch together with a pre-trained MobileNet showed the best precision in scoring RCRR (0.73 to 0.85). The average per plot of spectral information was used to score plots, and the benefit of adding the information obtained from the score of individual plants was compared. For this purpose, machine learning models were trained together with data management strategies, and the best-performing model was chosen. A combined pipeline of Random Forest and k-Nearest neighbors have shown the best weighted precision (0.67). This research provides a reliable workflow for detecting and scoring RCRR based on aerial imagery. RCRR is often distributed heterogeneously in trial plots, therefore, considering the information from individual plants of the plots showed a significant improvement of UAV based automated monitoring routines.

Publisher

Scientific Societies

Subject

Plant Science,Agronomy and Crop Science

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