Study on the Classification Method of Rice Leaf Blast Levels Based on Fusion Features and Adaptive-Weight Immune Particle Swarm Optimization Extreme Learning Machine Algorithm

被引:23
作者
Zhao, Dongxue [1 ]
Feng, Shuai [1 ]
Cao, Yingli [1 ,2 ]
Yu, Fenghua [1 ,2 ]
Guan, Qiang [1 ]
Li, Jinpeng [1 ]
Zhang, Guosheng [1 ]
Xu, Tongyu [1 ,2 ]
机构
[1] Shenyang Agr Univ, Coll Informat & Elect Engn, Shenyang, Peoples R China
[2] Liaoning Engn Res Ctr Informat Technol Agr, Shenyang, Peoples R China
关键词
rice; leaf blast; hyperspectral; fusion features; disease classification; SUCCESSIVE PROJECTIONS ALGORITHM; VARIABLE SELECTION; NITROGEN-CONTENT; JAPONICA RICE; RESISTANCE; PLANT; IDENTIFICATION; EXTRACTION; SPECTRUM; DISEASE;
D O I
10.3389/fpls.2022.879668
中图分类号
Q94 [植物学];
学科分类号
071001 ;
摘要
Leaf blast is a disease of rice leaves caused by the Pyricularia oryzae. It is considered a significant disease is affecting rice yield and quality and causing economic losses to food worldwide. Early detection of rice leaf blast is essential for early intervention and limiting the spread of the disease. To quickly and non-destructively classify rice leaf blast levels for accurate leaf blast detection and timely control. This study used hyperspectral imaging technology to obtain hyperspectral image data of rice leaves. The descending dimension methods got rice leaf disease characteristics of different disease classes, and the disease characteristics obtained by screening were used as model inputs to construct a model for early detection of leaf blast disease. First, three methods, ElasticNet, principal component analysis loadings (PCA loadings), and successive projections algorithm (SPA), were used to select the wavelengths of spectral features associated with leaf blast, respectively. Next, the texture features of the images were extracted using a gray level co-occurrence matrix (GLCM), and the texture features with high correlation were screened by the Pearson correlation analysis. Finally, an adaptive-weight immune particle swarm optimization extreme learning machine (AIPSO-ELM) based disease level classification method is proposed to further improve the model classification accuracy. It was also compared and analyzed with a support vector machine (SVM) and extreme learning machine (ELM). The results show that the disease level classification model constructed using a combination of spectral characteristic wavelengths and texture features is significantly better than a single disease feature in terms of classification accuracy. Among them, the model built with ElasticNet + TFs has the highest classification accuracy, with OA and Kappa greater than 90 and 87%, respectively. Meanwhile, the AIPSO-ELM proposed in this study has higher classification accuracy for leaf blast level classification than SVM and ELM classification models. In particular, the AIPSO-ELM model constructed with ElasticNet+TFs as features obtained the best classification performance, with OA and Kappa of 97.62 and 96.82%, respectively. In summary, the combination of spectral characteristic wavelength and texture features can significantly improve disease classification accuracy. At the same time, the AIPSO-ELM classification model proposed in this study has sure accuracy and stability, which can provide a reference for rice leaf blast disease detection.
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页数:15
相关论文
共 66 条
[11]   Rice Leaf Blast Classification Method Based on Fused Features and One-Dimensional Deep Convolutional Neural Network [J].
Feng, Shuai ;
Cao, Yingli ;
Xu, Tongyu ;
Yu, Fenghua ;
Zhao, Dongxue ;
Zhang, Guosheng .
REMOTE SENSING, 2021, 13 (16)
[12]   Inversion Based on High Spectrum and NSGA2-ELM Algorithm for the Nitrogen Content of Japonica Rice Leaves [J].
Feng Shuai ;
Cao Ying-li ;
Xu Tong-yu ;
Yu Feng-hua ;
Chen Chun-ling ;
Zhao Dong-xue ;
Jin Yan .
SPECTROSCOPY AND SPECTRAL ANALYSIS, 2020, 40 (08) :2584-2591
[13]   Research of Method for Inverting Nitrogen Content in Canopy Leaves of Japonica Rice in Northeastern China Based on Hyperspectral Remote Sensing of Unmanned Aerial Vehicle [J].
Feng Shuai ;
Xu Tong-yu ;
Yu Feng-hua ;
Chen Chun-ling ;
Yang Xue ;
Wang Nian-yi .
SPECTROSCOPY AND SPECTRAL ANALYSIS, 2019, 39 (10) :3281-3287
[14]   Monitoring Wheat Powdery Mildew Based on Hyperspectral, Thermal Infrared, and RGB Image Data Fusion [J].
Feng, Ziheng ;
Song, Li ;
Duan, Jianzhao ;
He, Li ;
Zhang, Yanyan ;
Wei, Yongkang ;
Feng, Wei .
SENSORS, 2022, 22 (01)
[15]   Early detection of grapevine leafroll disease in a red-berried wine grape cultivar using hyperspectral imaging [J].
Gao, Zongmei ;
Khot, Lav R. ;
Naidu, Rayapati A. ;
Zhang, Qin .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2020, 179
[16]   A guide to machine learning for biologists [J].
Greener, Joe G. ;
Kandathil, Shaun M. ;
Moffat, Lewis ;
Jones, David T. .
NATURE REVIEWS MOLECULAR CELL BIOLOGY, 2022, 23 (01) :40-55
[17]   Early detection of tomato spotted wilt virus infection in tobacco using the hyperspectral imaging technique and machine learning algorithms [J].
Gu, Qing ;
Sheng, Li ;
Zhang, Tianhao ;
Lu, Yuwen ;
Zhang, Zhijun ;
Zheng, Kefeng ;
Hu, Hao ;
Zhou, Hongkui .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2019, 167
[18]   TEXTURAL FEATURES FOR IMAGE CLASSIFICATION [J].
HARALICK, RM ;
SHANMUGAM, K ;
DINSTEIN, I .
IEEE TRANSACTIONS ON SYSTEMS MAN AND CYBERNETICS, 1973, SMC3 (06) :610-621
[19]  
He Yong He Yong, 2015, Transactions of the Chinese Society of Agricultural Engineering, V31, P174
[20]   Extreme learning machine: Theory and applications [J].
Huang, Guang-Bin ;
Zhu, Qin-Yu ;
Siew, Chee-Kheong .
NEUROCOMPUTING, 2006, 70 (1-3) :489-501