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马铃薯典型病害图像自适应特征融合与快速识别

肖志云 刘洪

农业机械学报2017,Vol.48Issue(12):26-32,7.
农业机械学报2017,Vol.48Issue(12):26-32,7.DOI:10.6041/j.issn.1000-1298.2017.12.003

马铃薯典型病害图像自适应特征融合与快速识别

Adaptive Features Fusion and Fast Recognition of Potato Typical Disease Images

肖志云 1刘洪1

作者信息

  • 1. 内蒙古工业大学电力学院,呼和浩特010080
  • 折叠

摘要

Abstract

In view of the difficulty in region location and classification of potato typical diseases under natural conditions,a new adaptive features fusion and fast recognition method of potato typical disease images was proposed.The segmented disease image,processing object of the proposed method,could be obtained as following two steps.Firstly,by using K-means,Hough transform and superpixels segmentation algorithms,the whole potato blade containing disease region was located in complicated background.Secondly,the disease region was separated from green blade by combining with twodimensional Otsu and morphology method.On the basis of the segmented disease image,totally 124 potato disease features,including 18 color features,21 shape features and 85 texture features were extracted.As thus,the color,shape and texture features were fused adaptively based on principal component analysis (PCA) algorithm and weighted formulation,and used to potato diseases recognition by support vector machine (SVM).According to features fusion and SVM recognition,totally 13 weighted principal components were gained as following three steps.Firstly,color,shape and texture features were automatically divided into many feature blocks,including RGB and HSV,geometric statistics (GS),central moments and Hu moments,Gray-level co-occurrence matrix (GLCM),high frequency low order moments and low frequency low order moments (HMLM),and high frequency covariance matrix eigenvalues and low frequency lower order moments (HELM).By comparison of recognition rates and features dimension,RGB,GS and HELM feature blocks were selected from color,shape,texture feature blocks,respectively.Secondly,five RGB,five GS and three HELM principal components were acquired by PCA algorithm.Thirdly,RGB,GS and HELM were weighted based on their recognition rates of principal components,and each principal component was also weighted based on weight distribution formulation.The recognition test of three kinds of typical potato samples showed that the proposed method had an obvious advantage.By using the same SVM recognition model,and compared with recognition rates of traditional adaptive methods,including PCA descending dimension,feature sorting selection,and so on,the proposed adaptive feature fusion algorithm had high average recognition rate which was increased by at least 1.8 percentage points.By using the same 13 adaptive fusion features,average recognition rate of the proposed recognition method was 95.2%,which were ncreased by 3.8 percentage points and 8.5 percentage points than those of ANN and Bayes,respectively,and run time of the proposed recognition method was 0.600 s,which was 3 s faster than that of ANN.Therefore,the proposed method could be used to greatly improve the recognition speed based on effectively ensuring the recognition accuracy.

关键词

马铃薯典型病害/Hough变换/主成分分析/加权融合/支持向量机

Key words

potato typical diseases/Hough transform/principal component analysis/weighted fusion/support vector machine

分类

信息技术与安全科学

引用本文复制引用

肖志云,刘洪..马铃薯典型病害图像自适应特征融合与快速识别[J].农业机械学报,2017,48(12):26-32,7.

基金项目

国家自然科学基金项目(61661042)和内蒙古自治区自然科学基金项目(2015MS0617) (61661042)

农业机械学报

OA北大核心CSCDCSTPCD

1000-1298

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