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基于卷积神经网络的温室黄瓜病害识别系统

马浚诚 杜克明 郑飞翔 张领先 孙忠富

农业工程学报2018,Vol.34Issue(12):186-192,7.
农业工程学报2018,Vol.34Issue(12):186-192,7.DOI:10.11975/j.issn.1002-6819.2018.12.022

基于卷积神经网络的温室黄瓜病害识别系统

Disease recognition system for greenhouse cucumbers based on deep convolutional neural network

马浚诚 1杜克明 1郑飞翔 1张领先 2孙忠富1

作者信息

  • 1. 中国农业科学院农业环境与可持续发展研究所,北京100081
  • 2. 中国农业大学信息与电气工程学院,北京100083
  • 折叠

摘要

Abstract

Cucumber is one of the most common vegetables in China, which is severely affected by various diseases, such as downy mildew and powdery mildew. The process of recognizing diseases is often time consuming, laborious and subjective. Most of disease damage evaluation and treatment are done by farmers in the field with guidance of plant pathologists. Incorrect diagnosis and pesticide over usage are very common. Therefore, a timely and accurate recognition method of cucumber diseases is in great demand. Convolutional neural network is one of the most popular and best performing methods for image recognition. Because convolutional neural network has been extensively applied to agriculture applications, it is feasible to use convolutional neural network as the pattern recognition method for plant disease recognition. Convolutional neural network can automatically learn appropriate features from training datasets instead of manual feature extraction. The efforts on feature extraction and optimization can be saved. This not only reduces the computation cost, but also increases the accuracy and efficiency of the recognition. In this study, the state of the art convolutional neural network and deep learning techniques were applied to the recognition of cucumber diseases using visible leaf symptoms. A disease recognition system for greenhouse cucumbers based on convolutional neural network was presented in this paper based on deep learning and image processing. The key point of effective identification and diagnosis of diseases was to acquire the disease information accurately. With the development of computer vision technology, segmenting the disease symptom images from leaf images was presently considered as the main route of disease information acquisition. Color was the most direct information to discriminate disease symptoms from the other parts in a single image captured under real field conditions. Disease images captured under real field conditions were suffering from uneven illumination and complicated background, which was a big challenge to achieve robust disease symptom image segmentation. The symptom images were segmented by a novel image processing method using color information and region growing. Firstly, combinations of color features (CCF) and its detection method were presented. The combinations of color features consisted of three color components, excess red index (ExR), H component of HSV color space and B component of CIELAB color space, which implemented powerful discrimination of disease symptoms from clutter background. Then an interactive region growing method based on the comprehensive color feature map was used to achieve disease symptom image segmentation from clutter background. Input datasets was built from the symptom images. In order to decrease the chance of overfitting, data augmentation method that was to rotate the original datasets by 90, 160, 180 and 270 degrees and flip horizontally and vertically was utilized to enlarge the input datasets, which produced 12 augmented datasets. With the augmented input datasets, the system achieved good classification performance. Experiments were conducted to test the performance of the system. Results showed that the symptom image segmentation method can achieve an overall accuracy of 97.29%, which indicated that the method was capable of obtaining accurate and robust segmentation under real field conditions. The system achieved an overall accuracy of 95.7%, 93.1% for downy mildew and 98.4% for powdery mildew respectively, which indicated that the disease recognition system was capable of recognizing cucumber downy mildew and powdery mildew.

关键词

温室/病害/识别/卷积神经网络/病斑分割

Key words

greenhouses/diseases/recognition/convolutional neural network/symptom image segmentation

分类

农业科技

引用本文复制引用

马浚诚,杜克明,郑飞翔,张领先,孙忠富..基于卷积神经网络的温室黄瓜病害识别系统[J].农业工程学报,2018,34(12):186-192,7.

基金项目

"十三五"国家重点研发计划(2016YFD0300606、2017YFD0300401、2017YFD0300402) (2016YFD0300606、2017YFD0300401、2017YFD0300402)

农业工程学报

OA北大核心CSCDCSTPCD

1002-6819

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