湖北农业科学 ›› 2021, Vol. 60 ›› Issue (7): 135-138.doi: 10.14088/j.cnki.issn0439-8114.2021.07.027

• 信息工程 • 上一篇    下一篇

基于图像特征融合的麦冬叶部病害识别

杨涛, 雷进, 朱皓睿, 胡钦云, 龙波   

  1. 成都农业科技职业学院机电信息学院,成都 611130
  • 收稿日期:2020-06-29 出版日期:2021-04-10 发布日期:2021-04-25
  • 作者简介:杨 涛(1991-),男,四川遂宁人,助教,硕士,主要从事机器视觉及其应用方面的研究,(电话)18349398395(电子信箱)egstao@163.com。
  • 基金资助:
    四川省教育厅重点自然科学研究项目(16ZA0382); 成都农业科技职业学院院级科研项目(CNY19-39)

Recognition of ophiopogon japonicus disease based on image feature fusion

YANG Tao, LEI Jin, ZHU Hao-rui, HU Qin-yun, LONG Bo   

  1. School of Mechanical and Electrical Information, Chengdu Vocational College of Agricultural Science and Technology, Chengdu 611130, China
  • Received:2020-06-29 Online:2021-04-10 Published:2021-04-25

摘要: 以川麦冬叶部黑斑病、炭疽病、叶枯病3种病害图像为研究对象,对比分析了双峰法、Otsu阈值分割法以及K-means聚类分割算法对麦冬病斑图像的分割效果。结果表明,K-means聚类算法结合数学形态学方法能满足病斑分割要求;提取病斑图像颜色、形状、纹理信息融合成病斑特征向量;运用方差分析与主成分分析法剔除了病害表征能力较差的特征参数并将特征向量维数降至10维;运用支持向量机设计出分类器进行病害识别,经试验识别率达到了90%。该方法具有成本低、算法简单、运行高效等优势,基本符合实际应用要求。

关键词: 麦冬, 图像处理, 主成分分析, 支持向量机, 病害识别

Abstract: The images of three diseases of black spot, anthracnose and leaf blight of Sichuan wheat and winter leaves were taken the research object, the bimodal method, Otsu threshold segmentation method and K-means clustering segmentation algorithm were compared and analyzed on the image of ophiopogon japonicus. The segmentation effect showed that the K-means clustering algorithm combined with the mathematical morphology processing method can meet the segmentation requirements; then, the color, shape and texture information of the lesion image was extracted into the lesion feature vector; then, the variance analysis and principal component analysis method was used to eliminate the characteristic parameters with poor disease characterization ability and reduce the eigenvector dimension to 10 dimensions. Finally, the classifier for disease identification was designed by the support vector machine, which recognition rate reached 90% after the experiment. The method has the advantages of low cost, simple algorithm and high efficiency, and basically meets the requirements of practical applications.

Key words: ophiopogon japonicus, image processing, PCA, SVM, disease recognition

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