Estimation of Winter Wheat Yield Using Multiple Temporal Vegetation Indices Derived from UAV-Based Multispectral and Hyperspectral Imagery
文献类型: 外文期刊
作者: Liu, Yu 1 ; Sun, Liang 1 ; Liu, Binhui 2 ; Wu, Yongfeng 4 ; Ma, Juncheng 4 ; Zhang, Wenying 2 ; Wang, Bianyin 2 ; Chen, Zhaoyang 2 ;
作者机构: 1.Chinese Acad Agr Sci, Inst Agr Resources & Reg Planning, State Key Lab Efficient Utilizat Arid & Semiarid A, Beijing 100081, Peoples R China
2.Hebei Acad Agr & Forestry Sci, Dryland Farming Inst, Hengshui 053000, Peoples R China
3.Key Lab Crop Drought Tolerance Res Hebei Prov, Hengshui 053000, Peoples R China
4.Chinese Acad Agr Sci, Inst Environm & Sustainable Dev Agr, Beijing 100081, Peoples R China
关键词: UAV; multiple temporal; hyperspectral imagery; field plot scale; vegetation index; yield estimation
期刊名称:REMOTE SENSING ( 影响因子:5.0; 五年影响因子:5.6 )
ISSN:
年卷期: 2023 年 15 卷 19 期
页码:
收录情况: SCI
摘要: Winter wheat is a major food source for the inhabitants of North China. However, its yield is affected by drought stress during the growing period. Hence, it is necessary to develop drought-resistant winter wheat varieties. For breeding researchers, yield measurement, a crucial breeding indication, is costly, labor-intensive, and time-consuming. Therefore, in order to breed a drought-resistant variety of winter wheat in a short time, field plot scale crop yield estimation is essential. Unmanned aerial vehicles (UAVs) have developed into a reliable method for gathering crop canopy information in a non-destructive and time-efficient manner in recent years. This study aimed to evaluate strategies for estimating crop yield using multispectral (MS) and hyperspectral (HS) imagery derived from a UAV in single and multiple growth stages of winter wheat. To accomplish our objective, we constructed a simple linear regression model based on the single growth stages of booting, heading, flowering, filling, and maturation and a multiple regression model that combined these five growth stages to estimate winter wheat yield using 36 vegetation indices (VIs) calculated from UAV-based MS and HS imagery, respectively. After comparing these regression models, we came to the following conclusions: (1) the flowering stage of winter wheat showed the highest correlation with crop yield for both MS and HS imagery; (2) the VIs derived from the HS imagery performed better in terms of estimation accuracy than the VIs from the MS imagery; (3) the regression model that combined the information of five growth stages presented better accuracy than the one that considered the growth stages individually. The best estimation regression model for winter wheat yield in this study was the multiple linear regression model constructed by the VI of '(b(1)-b(2))/(b(3)-b(4))' derived from HS imagery, incorporating the five growth stages of booting, heading, flowering, filling, and maturation with r of 0.84 and RMSE of 0.69 t/ha. The corresponding central wavelengths were 782 nm, 874 nm, 762 nm, and 890 nm, respectively. Our study indicates that the multiple temporal VIs derived from UAV-based HS imagery are effective tools for breeding researchers to estimate winter wheat yield on a field plot scale.
- 相关文献
作者其他论文 更多>>
-
Manipulation of glycine-serine and flavanone metabolism to maintain plasma membrane stability and improve drought tolerance of millet
作者:Wang, Mengjiao;Guo, Jixun;Zhang, Tao;Shi, Lianxuan;Wang, Bianyin;Liu, Yajie;Zhang, Wenying;Wang, Bianyin;Liu, Yajie;Zhang, Wenying;Zhang, Xiao
关键词:Drought; Metabolomics; Millet; Roots; Transcriptomics
-
Assessing the role of genotype by environment interaction of winter wheat cultivars using envirotyping techniques in North China
作者:Yue, Haiwang;Chen, Zhaoyang;Liu, Pengcheng;Yang, Haoxiang;Wei, Jianwei;Bu, Junzhou;Wang, Yanbing;Zhu, Jiashuai;Behera, Partha Pratim;Jiang, Xuwen;Ma, Wujun;Jiang, Xuwen
关键词:mega-environment; GGE biplot; mixed model; grain yield; envirotyping techniques
-
The long non-coding RNA MSTRG.32189-PcmiR399b-PcUBC24 module regulates phosphate accumulation and disease resistance to Botryosphaeria dothidea in pear
作者:Yang, Yuekun;Lv, Shamei;He, Ying;Zhang, Xiaoyan;Liu, Yu;Wang, Guoping;Hong, Ni;Wang, Liping;Yang, Yuekun;Lv, Shamei;He, Ying;Zhang, Xiaoyan;Liu, Yu;Wang, Guoping;Hong, Ni;Wang, Liping;Yang, Yuekun;Huang, Xiaosan
关键词:
-
Estimation of Leaf, Spike, Stem and Total Biomass of Winter Wheat Under Water-Deficit Conditions Using UAV Multimodal Data and Machine Learning
作者:Liu, Jinhang;Wu, Yongfeng;Zhang, Yulin;Zhang, Wenying;Liu, Binhui;Zhang, Wenying;Liu, Binhui;Ma, Juncheng
关键词:UAV; winter wheat; aboveground biomass; multimodality; machine learning
-
Deep root in relation to grain yield and plant height of waxy maize
作者:Ge, Yaoxiang;Hu, Xiaohu;Li, Xingyan;Zhang, Cai;Wu, Zhuoxuan;Bai, Caihong;Deng, Ping;Zhang, Wenying
关键词:Deep root; height; waxy maize; yield; Zea mays L. Ceratina Group Kuleshov.
-
Rapid evaluation of drought tolerance of winter wheat cultivars under water-deficit conditions using multi-criteria comprehensive evaluation based on UAV multispectral and thermal images and automatic noise removal
作者:Wu, Yongfeng;Ma, Juncheng;Zhang, Wenying;Liu, Binhui;Wang, Bianyin;Chen, Zhaoyang;Sun, Liang;Liu, Yu;Ma, Juncheng;Liu, Binhui
关键词:UAV multispectral and thermal images; Automatic image segmentation; Multi -criteria comprehensive evaluation; Drought tolerance
-
Grain yield and water productivity of winter wheat controlled by irrigation regime and manure substitution in the North China Plain
作者:Yan, Zhenxing;Liu, Xiuwei;Yan, Zhenxing;Wang, Qingsuo;Mei, Xurong;Zhang, Wenying;Liu, Binhui;Mei, Xurong
关键词:Deficit irrigation; Organic substitution; Water consumption; Leaf area index; Ratio of evaporation to evapotranspiration



