Abstract

Fusarium head blight (FHB) is one of the most important diseases in wheat worldwide. Evaluation and identification of effective fungicides are essential for control of FHB. However, traditional methods based on the manual disease severity assessment to evaluate the efficacy of fungicides are time-consuming and laborsome. In this study, we developed a new method to rapidly assess the severity of FHB and evaluate the efficacy of fungicide application programs. Enhanced red-green-green (RGG) images were processed from acquired raw red-green-blue (RGB) images of wheat ear samples; the images were transformed in color spaces through K-means clustering for rough segmentation of wheat ears; a random forest classifier was used with features of color, texture, geometry and vegetation index for fine segmentation of disease spots in wheat ears; a newly proposed width mutation counting algorithm was used to count wheat ears; and the disease severity of the wheat ears groups was graded and the efficacy of six fungicides was evaluated. The results show that the segmentation algorithm could segment wheat ears from a complex field background. And the counting algorithm could effectively solve the problem of wheat ear adhesion and occlusion. The average counting accuracy of all and diseased wheat ears were 93.00% and 92.64%, respectively, with the coefficients of determination (R 2 ) of 0.90 and 0.98, and the root mean square error (RMSE) of 10.56 and 7.52, respectively. The new method could accurately assess the diseased levels of wheat eat groups infected by FHB and determine the efficacy of the six fungicides evaluated. The results demonstrate a potential of using digital imaging technology to evaluate and identify effective fungicides for control of the FHB disease in wheat and other crop diseases.

Highlights

  • Wheat is one of the world’s major food crops, providing essential nutrients for human life [1]

  • In this paper, a proposed algorithm based on image transformation and K-means clustering was used for rough segmentation and combining random forest classifier for fine segmentation

  • Selecting 18 features in the experiment to improve the effect of fine segmentation and a new vegetation index (NGRBDI) was created

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Summary

Introduction

Wheat is one of the world’s major food crops, providing essential nutrients for human life [1]. Its adequate supply is essential to ensure global food security [2], [3]. Fusarium head blight (FHB), caused by Fusarium graminearum, is a devasting disease in wheat that occurs worldwide [4], [5]. FHB can cause metamorphism of the whole wheat grains [6]. The fungus produces deoxynivalenol (DON), a toxin that can cause poisoning to humans and animals [7]. It is very important to develop effective strategies to monitor the development of FHB and control of the disease. Evaluating the efficacy of fungicides is the first essential step in developing effective fungicide application programs that can control the FHB disease

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