Abstract

Cucumber powdery mildew, which is caused by Podosphaera xanthii, is a major disease that has a significant economic impact in cucumber greenhouse production. It is necessary to develop a non-invasive fast detection system for that disease. Such a system will use multispectral imagery acquired at a close range with a camera attached to a mobile cart’s mechanic extension. This study evaluated three image registration methods applied to non-georeferenced multispectral images acquired at close range over greenhouse cucumber plants with a MicaSense® RedEdge camera. The detection of matching points was performed using Speeded-Up Robust Features (SURF), and outliers matching points were removed using the M-estimator Sample Consensus (MSAC) algorithm. Three geometric transformations (affine, similarity, and projective) were considered in the registration process. For each transformation, we mapped the matching points of the blue, green, red, and NIR band images into the red-edge band space and computed the root mean square error (RMSE in pixel) to estimate the accuracy of each image registration. Our results achieved an RMSE of less than 1 pixel with the similarity and affine transformations and of less than 2 pixels with the projective transformation, whatever the band image. We determined that the best image registration method corresponded to the affine transformation because the RMSE is less than 1 pixel and the RMSEs have a Gaussian distribution for all of the bands, but the blue band.

Highlights

  • In Canada, there are close to 16.9 million m2 greenhouses [1], about 25% (4.3 million m2 ) being dedicated to cucumber (Cucumis sativus L.) production [1], which led to a total cucumber production of 206,228 metric tons in 2017 [1]

  • Among all of the images, the green band image number 30 had the lowest number of matching inliers matching points between the fixed and moving images for each transformation points (Figure 5), with a value of 1125 (Table 5)

  • We evaluated three methods of image registration in the case of nongeoreferenced multispectral images acquired at close range over greenhouse cucumber plants with a MicaSense® RedEdge camera attached to a mechanic extension of a mobile cart

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Summary

Introduction

In Canada, there are close to 16.9 million m2 greenhouses [1], about 25% (4.3 million m2 ) being dedicated to cucumber (Cucumis sativus L.) production [1], which led to a total cucumber production of 206,228 metric tons in 2017 [1]. One of them is powdery mildew, which is caused by the fungus Podosphaera xanthii This disease may lead to yield losses between 30 and 50% of the total production [3]. Powdery mildew grows haustorium that causes internal structural damage of colonized cell walls of leaves, petioles, and stems, establishing a close connection with the lying beneath the host cells [5,6]. Such changes in the cell walls should be better detected using near-infrared imagery [7].

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