Hyperspectral Estimation of Winter Wheat Leaf Area Index Based on Continuous Wavelet Transform and Fractional Order Differentiation
文献类型: 外文期刊
第一作者: Li, Changchun
作者: Li, Changchun;Wang, Yilin;Ma, Chunyan;Ding, Fan;Li, Yacong;Chen, Weinan;Li, Jingbo;Xiao, Zhen;Li, Jingbo
作者机构:
关键词: winter wheat; leaf area index; fractional order differential; continuous wavelet transform; optimal subset regression; support vector machine
期刊名称:SENSORS ( 影响因子:3.847; 五年影响因子:4.05 )
ISSN:
年卷期: 2021 年 21 卷 24 期
页码:
收录情况: SCI
摘要: Leaf area index (LAI) is highly related to crop growth, and the traditional LAI measurement methods are field destructive and unable to be acquired by large-scale, continuous, and real-time means. In this study, fractional order differential and continuous wavelet transform were used to process the canopy hyperspectral reflectance data of winter wheat, the fractional order differential spectral bands and wavelet energy coefficients with more sensitive to LAI changes were screened by correlation analysis, and the optimal subset regression and support vector machine were used to construct the LAI estimation models for different growth stages. The precision evaluation results showed that the LAI estimation models constructed by using wavelet energy coefficients combined with a support vector machine at the jointing stage, fractional order differential combined with support vector machine at the booting stage, and wavelet energy coefficients combined with optimal subset regression at the flowering and filling stages had the best prediction performance. Among these, both flowering and filling stages could be used as the best growth stages for LAI estimation with modeling and validation R-2 of 0.87 and 0.71, 0.84 and 0.77, respectively. This study can provide technical reference for LAI estimation of crops based on remote sensing technology.
分类号:
- 相关文献
作者其他论文 更多>>
-
Quantifying corn LAI using machine learning and UAV multispectral imaging
作者:Cheng, Qian;Ding, Fan;Xu, Honggang;Li, Zongpeng;Chen, Zhen;Guo, Shuzhe
关键词:Corn; LAI; Unmanned aerial vehicle; Ensemble learning; Water and fertilizer stress
-
Analyzing winter-wheat biochemical traits using hyperspectral remote sensing and deep learning
作者:Yue, Jibo;Wang, Jian;Guo, Wei;Ma, Xinming;Qiao, Hongbo;Yang, Guijun;Liu, Yang;Feng, Haikuan;Yue, Jibo;Yang, Guijun;Li, Changchun;Niu, Qinglin;Feng, Haikuan
关键词:Unmanned aerial vehicle; Transfer learning; Deep learning; Hyperspectral
-
Overridingly increasing vegetation sensitivity to vapor pressure deficit over the recent two decades in China
作者:Liu, Miao;Yang, Guijun;Li, Zhenhong;Gao, Meiling;Yang, Yun;Liu, Miao;Yang, Guijun;Long, Huiling;Meng, Yang;Hu, Haitang;Li, Heli;Yuan, Wenping;Li, Changchun;Yuan, Zhanliang;Meng, Yang
关键词:Vapor pressure deficit (VPD); Aridity index (AI); EVI; NIRv; Vegetation; Sensitivity
-
BoaBZR1.1 mediates brassinosteroid-induced carotenoid biosynthesis in Chinese kale
作者:Zhang, Chenlu;Liang, Qiannan;Wang, Yilin;Liang, Sha;Huang, Zhi;Li, Huanxiu;Zhang, Fen;Tang, Yi;Sun, Bo;Escalona, Victor Hugo;Yao, Xingwei;Cheng, Wenjuan;Yao, Xingwei;Cheng, Wenjuan;Chen, Zhifeng;Wang, Qiaomei
关键词:
-
Temporal and Spatial Signatures of Scylla paramamosain Transcriptome Reveal Mechanistic Insights into Endogenous Ovarian Maturation under Risk of Starvation
作者:Fu, Yin;Zhang, Fengying;Wang, Wei;Zhao, Ming;Ma, Chunyan;Chen, Wei;Liu, Zhiqiang;Ma, Keyi;Ma, Lingbo;Fu, Yin;Cheng, Yongxu;Xu, Jiayuan;Su, Zhixing;Lv, Xiaokang
关键词:Scylla paramamosain; ovarian development; starvation; autophagy; gene expression; biochemical analysis
-
Interpretation of the adsorption process of toxic Cd2+ removal by modified sweet potato residue
作者:Gao, Yu;Yi, Zhuolin;Fang, Yang;Du, Anping;Jiang, Yijia;Zhao, Hai;Jin, Yanling;Wang, Jinling;Ding, Fan
关键词:
-
Improving potato AGB estimation to mitigate phenological stage impacts through depth features from hyperspectral data
作者:Liu, Yang;Feng, Haikuan;Fan, Yiguang;Chen, Riqiang;Bian, Mingbo;Ma, Yanpeng;Li, Jingbo;Xu, Bo;Yang, Guijun;Liu, Yang;Liu, Yang;Feng, Haikuan;Yue, Jibo;Jin, Xiuliang
关键词:AGB; Hyperspectral features; Deep features; SPA; LSTM; PLSR