Potato late blight severity monitoring based on the relief-mRmR algorithm with dual-drone cooperation
文献类型: 外文期刊
第一作者: Sun, Heguang
作者: Sun, Heguang;Song, Xiaoyu;Yang, Guijun;Feng, Haikuan;Zhang, Jie;Feng, Ziheng;Ma, Yuanyuan;Zheng, Chunkai;Li, Pingping;Pan, Di;Sun, Heguang;Guo, Wei;Wang, Jiao;Guo, Mei;Mao, Yanzhi;Feng, Ziheng
作者机构:
关键词: Late Blight in Potato; Dual -drone cooperation; Relief-mRmR; Machine learning
期刊名称:COMPUTERS AND ELECTRONICS IN AGRICULTURE ( 影响因子:8.3; 五年影响因子:8.3 )
ISSN: 0168-1699
年卷期: 2023 年 215 卷
页码:
收录情况: SCI
摘要: Late Blight in Potato, a prevalent potato disease, significantly impacts potato yield and stands as one of the principal afflictions affecting the potato crop. Timely and effective monitoring of late blight severity in potato and its spatial distribution has become an immediate priority. In this study, we employed a dual-drone collaborative approach, utilizing the multispectral drone from DJI as well as an ultra-high-resolution RGB drone. By integrating the vegetation index derived from the multispectral UAV, the texture index from the RGB drone, and the estimated crown coverage feature, we combined the relief-mRmR technique with machine learning modeling algorithms to monitor late blight in potato. We compared and constructed severity monitoring models for late blight in potato using Support Vector Machine (SVM), Random Forest (RF), and K-Nearest Neighbors (KNN) classification algorithms. The results indicate that the RF model exhibited the highest accuracy. For the training dataset, the overall accuracy (OA) and kappa coefficient were 92.50% and 0.90, respectively, while for the independent validation dataset, the OA and kappa coefficient reached 97.50% and 0.96, respectively. The findings also demonstrate that augmenting the vegetation index and texture index with the estimated high-resolution plant crown coverage information significantly enhances the accuracy of the late blight in potato monitoring model.
分类号:
- 相关文献
作者其他论文 更多>>
-
Insights into the adsorption performance and mechanism of novel 3D bimetallic MOF nanosheets for the high-efficient removal of 6PPD and 6PPD-quinone
作者:Wu, Nannan;Wang, Jiao;Liu, Zhenzhen;Zhao, Huiyu;Di, Shanshan;Wang, Zhiwei;Wang, Xinquan;Qi, Peipei;Zheng, Bing;Zheng, Bing;Di, Shanshan;Wang, Zhiwei;Wang, Xinquan;Qi, Peipei;Di, Shanshan;Wang, Zhiwei;Wang, Xinquan;Qi, Peipei
关键词:3D bimetallic MOFs; 6PPD; 6PPD-quinone; Adsorption mechanism; DFT calculations
-
Novel pleuromutilin derivatives conjugated with phenyl-sulfide and boron-containing moieties as potent antibacterial agents against antibiotic-resistant bacteria
作者:Luo, Xinyu;Feng, Jing;Zhang, Jie;Yu, Hang;Han, Zunsheng;Zhu, Zihao;Liu, Bo;Wang, Yan;Zhang, Chi;Li, Tianlei;Zhang, Wenxuan;Wu, Song;Wu, Guangxu;Fu, Hengjian;Pan, Weidong;Nie, Wansen;Li, Beibei
关键词:Antimicrobial resistance; Pleuromutilin derivatives; Conjugated compounds; MRSA; Pleuromutilin-resistant strain
-
Genetic diversity and population structure of wheat landraces in Southern Winter Wheat Region of China
作者:Liu, Ying;Fu, Bisheng;Zhang, Qiaofeng;Cai, Jin;Guo, Wei;Zhai, Wenling;Wu, Jizhong;Fu, Bisheng;Cai, Jin;Guo, Wei;Wu, Jizhong;Wu, Jizhong
关键词:Triticum aestivum. L; Landrace; Core collection; Genetic diversity; Population structure
-
A broad-spectrum vaccine candidate against H5 viruses bearing different sub-clade 2.3.4.4 HA genes
作者:Zhang, Yuancheng;Cui, Pengfei;Shi, Jianzhong;Zeng, Xianying;Jiang, Yongping;Chen, Yuan;Zhang, Jie;Wang, Congcong;Wang, Yan;Tian, Guobin;Chen, Hualan;Kong, Huihui;Deng, Guohua
关键词:
-
D-Limonene Is the Active Olfactory Attractant in Orange Juice for Bactrocera dorsalis (Insecta: Diptera: Tephritidae)
作者:Liu, Leyuan;Zhou, Hongxu;Yuan, Jinxi;Liu, Wei;Wang, Guirong;Yang, Lang;Zhang, Jie;Liu, Chenhao
关键词:B. dorsalis; behavior regulation technology; D-Limonene; odor receptor
-
Recognition of wheat rusts in a field environment based on improved DenseNet
作者:Chang, Shenglong;Cheng, Jinpeng;Fan, Zehua;Ma, Xinming;Li, Yong;Zhao, Chunjiang;Chang, Shenglong;Yang, Guijun;Cheng, Jinpeng;Fan, Zehua;Yang, Xiaodong;Zhao, Chunjiang
关键词:Plant disease; Wheat rust; Image processing; Deep learning; Computer vision (CV); DenseNet
-
Automatic Rice Early-Season Mapping Based on Simple Non-Iterative Clustering and Multi-Source Remote Sensing Images
作者:Wang, Gengze;Chen, Riqiang;Yang, Guijun;Feng, Haikuan;Wang, Gengze;Chen, Riqiang;Yang, Guijun;Feng, Haikuan;Meng, Di;Jin, Hailiang;Ge, Xiaosan;Wang, Laigang;Feng, Haikuan
关键词:early-season rice mapping; spectral index (SI); synthetic aperture radar (SAR); Simple Non-Iterative Clustering (SNIC); time series filtering; K-Means; Jeffries-Matusita (JM) distance