欢迎您访问《智慧农业(中英文)》官方网站! English

Smart Agriculture ›› 2020, Vol. 2 ›› Issue (3): 86-97.doi: 10.12133/j.smartag.2020.2.3.202009-SA001

• 专题--农业人工智能与大数据 • 上一篇    下一篇

基于核相互子空间法的番茄叶部病害快速识别模型

张燕1,2,3(), 李庆学1,2,3(), 吴华瑞1,2,3   

  1. 1.国家农业信息化工程技术研究中心,北京 100097
    2.北京农业信息技术研究中心,北京 100097
    3.农业农村部 农业信息技术重点实验室,北京 100097
  • 收稿日期:2020-09-01 修回日期:2020-09-28 出版日期:2020-09-30
  • 基金资助:
    国家大宗蔬菜产业技术体系岗位专家项目(CARS-23-C06);国家自然科学基金(61771058);石家庄市科学技术研究与发展计划项目(201490074A)
  • 作者简介:张 燕(1983-),女,博士,助理研究员,研究方向为农业智能系统。E-mail:zhangy@nercita.org.cn
  • 通信作者:

Rapid Recognition Model of Tomato Leaf Diseases based on Kernel Mutual Subspace Method

ZHANG Yan1,2,3(), LI Qingxue1,2,3(), WU Huarui1,2,3   

  1. 1.National Engineering Research Center for Information Technology in Agriculture, Beijing 100097, China
    2.Beijing Research Center for Information Technology in Agriculture, Beijing 100097, China
    3.Key Laboratory of Agri-informatics, Ministry of Agriculture and Rural Affairs, Beijing 100097, China
  • Received:2020-09-01 Revised:2020-09-28 Online:2020-09-30

摘要:

近年来,基于叶片图像的番茄病害识别研究受到广泛关注。本研究利用番茄叶部病害图像中病斑的颜色和纹理的差异,通过提取番茄病害叶片图像的颜色矩(CM)、颜色聚合向量(CCV)和方向梯度直方图(HOG)等颜色纹理特征,引入核相互子空间法(KMSM),建立了番茄叶部病害快速识别模型(CCHKMSM)。该模型首先通过高斯核函数,将从不同类别叶部病害图像数据中抽取的颜色及纹理特征映射到高维空间;然后对映射的高维空间进行主成分分析,建立非线性病害特征空间;最后基于非线性特征空间最小正则角对病害进行识别。本研究分别以公共农业病虫害数据集PlantVillage中的9种番茄病害类和1类健康番茄叶片图像,以及实际场景下采集的3种叶部病虫害图像数据集开展算法验证试验。基于PlantVillage的试验结果表明,当每类样本集数量为350张时,本研究所提出的CCHKMSM模型识别率达到100%,模型训练时间为0.1540 s,平均识别时间为0.013 s;同时,在样本数量150张到1000张的测试区间内,模型平均识别率为99.14%。该识别率高于其他典型的机器学习模型,与基于深度学习的识别方法相当。基于实际复杂场景下采集病害图像集的实验中,通过对原始图像切割分块后,对各病害的平均识别率为96.21%。试验结果表明,本研究提出的CCHKMSM模型识别准确率高且计算量小,其训练时间和测试时间都远低于深度学习等方法。该方法对系统要求低,具有在手持设备、边缘计算终端等低配置感知系统中的应用潜力。

关键词: 番茄叶片图像, 病害快速识别, 颜色纹理特征, 核相互子空间法

Abstract:

Research on tomato disease recognition based on leaf images has been widely concerned in recent years, and with the development of machine learning and deep learning, researchers from various countries have proposed a variety of methods and models to solve this problem. In this research, a new approach by fusion color and texture features, and kernal mutual subspace method (KMSM) were introduced and a rapid recognition model of tomato leaf disease was established. The color and texture features introduced in this research including color moment (CM), color coherence vector (CCV) and histogram of oriented gradient (HOG) features. The CCHKMSM (CM+CCV+HOG+KMSM) model firstly mapped the extracted color and texture features from different classes of leaf disease data sets to high-dimensional space using gauss kernal function. Then the principal component of the mapped high-dimensional space was analysed, and the nonlinear disease characteristic space was generated. Finally, the diseases based on the minimum cosine angle of nonlinear feature space were identified. Validation experiment was conducted based on public agricultural disease data sets of PlantVillage, which providing 9 kinds of most commonly tomato leaf disease and 1 kind of healthy leaf image, and the filed took image include 3 kinds of tomato leaf diseases images. For experiment based on PlantVillage data set, the results showed that the CCHKMSM realized the most high recognize accuracy rate of 100% when the number of each class was 350. The training time cost and recognition time cost was 0.1540 s and 0.013 s, respectively. Meanwhile, experiments were conducted in the range of sample image numbers from 150 to 1000 images for each class, with step length of 50, and the obtained results showed that the average recognition rate was 99.14%. For experiment based on field took tomato diseases data sets, after segment original image into sub-size image, average recognize accuracy for the kind of diseases arrived at 96.21%, which was higher than other typical machine learning models such as SVM and KMSM, and at the same level by comparing with deep learning-based recognition methods. On the other hand, as an significant adventure of the proposed CCHKMSM model, the computing cost was low, both the training time and testing time were much lower than deep learning methods, and requirement is loss the system to run. As a conclusion, the proposed CCHKMSM model, has high potential to be applied in low-configuration equipment such as hand-held devices and edge computing terminals.

Key words: tomato leaf image, rapid diseases recognition, color and texture feature, kernel mutual subspace method

中图分类号: