Abstract

Fusarium head blight (FHB), one of the most important diseases of wheat, mainly occurs in the ear. Given that the severity of the disease cannot be accurately identified, the cost of pesticide application increases every year, and the agricultural ecological environment is also polluted. In this study, a neural network (NN) method was proposed based on the red-green-blue (RGB) image to segment wheat ear and disease spot in the field environment, and then to determine the disease grade. Firstly, a segmentation dataset of single wheat ear was constructed to provide a benchmark for the segmentation of the wheat ear. Secondly, a segmentation model of single wheat ear based on the fully convolutional network (FCN) was established to effectively realize the segmentation of the wheat ear in the field environment. An FHB segmentation algorithm was proposed based on a pulse-coupled neural network (PCNN) with K-means clustering of the improved artificial bee colony (IABC) to segment the diseased spot of wheat ear by automatic optimization of PCNN parameters. Finally, the disease grade was calculated using the ratio of the disease spot to the whole wheat ear. The experimental results show that: (1) the accuracy of the segmentation model for single wheat ear constructed in this study is 0.981. The segmentation time is less than 1 s, indicating that the model can quickly and accurately segment wheat ear in the field environment; (2) the segmentation method of the disease spot performed under each evaluation indicator is improved compared with the traditional segmentation methods, and the accuracy is 0.925 in the disease severity identification. These research results can provide important reference value for grading wheat FHB in the field environment, which also can be beneficial for real-time monitoring of other crops’ diseases under near-Earth remote sensing.

Highlights

  • Fusarium head blight (FHB) caused by Fusarium graminearum Sehw, is a worldwide epidemic disease in global wheat production [1]

  • In order to explore the effectiveness of the single wheat ear segmentation model and the disease segmentation method, we conducted experiments on 120 wheat FHB images in the field environment

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Summary

Introduction

Fusarium head blight (FHB) caused by Fusarium graminearum Sehw, is a worldwide epidemic disease in global wheat production [1]. Since the severity of the disease cannot be accurately judged, it results in the use of excessive pesticides, greatly damaging the agricultural ecological environment [4]. Those methods currently employed for identifying wheat FHB are as follows. Compared with traditional artificial inspection and hyperspectral technology, image processing technology based on RGB image is highly effective in disease identification, low in computational costs, and has a strong universality [8,9]. Digital image processing technology based on RGB image has been widely used in wheat crops [10,11] It provides an important reference for the study of wheat FHB identification based on RGB image. The accurate segmentation of the disease spot is an important step to grade the disease severity precisely

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