Oilseed Rape Yield Prediction from UAVs Using Vegetation Index and Machine Learning: A Case Study in East China
文献类型: 外文期刊
第一作者: Hu, Hao
作者: Hu, Hao;Zhou, Hongkui;Lou, Weidong;Gu, Qing;Hu, Hao;Zhou, Hongkui;Lou, Weidong;Gu, Qing;Ren, Yun;Hao, Pengfei;Lin, Baogang;Hua, Shuijin;Zhang, Guangzhi
作者机构:
关键词: oilseed rape; UAV; yield; vegetation index; machine learning
期刊名称:AGRICULTURE-BASEL ( 影响因子:3.6; 五年影响因子:3.8 )
ISSN:
年卷期: 2024 年 14 卷 8 期
页码:
收录情况: SCI
摘要: Yield prediction is an important agriculture management for crop policy making. In recent years, unmanned aerial vehicles (UAVs) and spectral sensor technology have been widely used in crop production. This study aims to evaluate the ability of UAVs equipped with spectral sensors to predict oilseed rape yield. In an experiment, RGB and hyperspectral images were captured using a UAV at the seedling (S1), budding (S2), flowering (S3), and pod (S4) stages in oilseed rape plants. Canopy reflectance and spectral indices of oilseed rape were extracted and calculated from the hyperspectral images. After correlation analysis and principal component analysis (PCA), input spectral indices were screened to build yield prediction models using random forest regression (RF), multiple linear regression (MLR), and support vector machine regression (SVM). The results showed that UAVs equipped with spectral sensors have great potential in predicting crop yield at a large scale. Machine learning approaches such as RF can improve the accuracy of yield models in comparison with traditional methods (e.g., MLR). The RF-based training model had the highest determination coefficient (R2) (0.925) and lowest relative root mean square error (RRMSE) (5.91%). In testing, the MLR-based model had the highest R2 (0.732) and lowest RRMSE (11.26%). Moreover, we found that S2 was the best stage for predicting oilseed rape yield compared with the other growth stages. This study demonstrates a relatively accurate prediction for crop yield and provides valuable insight for field crop management.
分类号:
- 相关文献
作者其他论文 更多>>
-
Yield prediction through UAV-based multispectral imaging and deep learning in rice breeding trials
作者:Zhou, Hongkui;Lou, Weidong;Gu, Qing;Ye, Ziran;Hu, Hao;Zhang, Xiaobin;Huang, Fudeng
关键词:UAV; Yield prediction; Multispectral imaging; Deep learning; Rice breeding
-
Comprehensive illustration of the improvement of soil conditions and rice production through paddy-upland rotations for sustainable agricultural development
作者:Hao, Pengfei;Lin, Baogang;Yi, Kaige;Xue, Bowen;Hua, Shuijin
关键词:Rotations; Transcriptomics; Sustainability; Soil physiochemical properties; Yield traits
-
Characteristics of compound heat and drought events during the spring maize growing season in Northeast China Based on a novel daily-scale analysis framework
作者:Yang, Jianhua;Wu, Jianjun;Zhang, Zhenqing;Yang, Jianhua;Wu, Jianjun;Zhang, Zhenqing;Zhang, Ruilin;Wu, Jianjun;Zhou, Lei;Zhou, Hongkui
关键词:CHDEs; Daily-scale Analysis Method; Effective Precipitation; Spring Maize; Northeast China
-
Impact of Coastal Squeeze Induced by Erosion and Land Reclamation on Salt Marsh Wetlands
作者:Zhang, Guangzhi;Gu, Jiali;Sun, Maoming;Shao, Jie;Dong, Weiliang;Liang, Liang;Zeng, Jian;Zhang, Guangzhi;Gu, Jiali;Sun, Maoming;Shao, Jie;Dong, Weiliang;Liang, Liang;Zeng, Jian;Hu, Hao
关键词:erosion; salt marsh; reclamation; coastline; coastal squeeze; Jiangsu
-
Quantifying tree-level peach flowering dynamics using UAV imagery and an optimized instance segmentation model
作者:Gu, Qing;Cheng, Jiayu;Lou, Weidong;Zhang, Xiaobin;Zhang, Minghao;Li, Xiongwei;Jackson, Robert;Ju, Lei;Zhou, Ji;Chen, Miaojin
关键词:Peach flowering; Phenotype; Unmanned aerial vehicle; Fruit breeding; Instance segmentation
-
La Sota-vectored recombinant vaccine with chimeric hemagglutinin-neuraminidase for enhanced protection against highly pathogenic pigeon paramyxovirus type 1
作者:Zhang, Shan;Liu, Dahu;Zhang, Guangzhi;Liang, Ruiying;Liang, Lin;Tang, Xinming;Hou, Shaohua;Ding, Jiabo;Zhang, Shan;Liu, Dahu;Zhang, Guangzhi;Liang, Ruiying;Liang, Lin;Tang, Xinming;Hou, Shaohua;Ding, Jiabo;Qiu, Xusheng;Zhang, Ziyan;Ding, Chan;Liu, Baojing
关键词:Pigeon Paramyxovirus Type 1; antigenic difference; biological characteristic; immune efficacy
-
Characterizing Chinese saffron Origin, Age and grade using VNlR hyperspectral imaging and Machine learning
作者:Wu, Jiahui;Xu, Xinyue;Feng, Peishi;Wang, Ping;Wu, Jiahui;Nie, Jing;Xu, Xinyue;Li, Chunlin;Mei, Hanyi;Rogers, Karyne M.;Yuan, Yuwei;Wu, Jiahui;Nie, Jing;Xu, Xinyue;Li, Chunlin;Mei, Hanyi;Rogers, Karyne M.;Yuan, Yuwei;Hu, Hao;Zhou, Hongkui;Rogers, Karyne M.;Wang, Ping
关键词:Saffron; Geographical origin; Hyperspectral imaging; Machine learning