Estimation of Potato Above Ground Biomass Based on Hyperspectral Images of UAV
文献类型: 外文期刊
第一作者: Liu Yang
作者: Liu Yang;Feng Hai-kuan;Sun Qian;Wang Jiao-jiao;Yang Gui-jun;Zhang Han;Feng Hai-kuan;Liu Yang;Huang Jue;Liu Yang;Feng Hai-kuan;Sun Qian;Wang Jiao-jiao;Yang Gui-jun
作者机构:
关键词: Potato; UAV; Imaging hyperspectral; Random frog; Gaussian process regression; Above-ground biomass
期刊名称:SPECTROSCOPY AND SPECTRAL ANALYSIS ( 影响因子:0.589; 五年影响因子:0.504 )
ISSN: 1000-0593
年卷期: 2021 年 41 卷 9 期
页码:
收录情况: SCI
摘要: Accurate monitoring of above-ground biomass (AGB) is an important part of farm production management, so rapid and accurate estimation of AGB is important for the development of precision agriculture. Traditionally, AGB has been obtained using destructive sampling methods, which makes large-area, long-term measurements difficult. However, with the advancement of science and technology, UAV hyperspectral remote sensing has become the most effective technical means to estimate AGB of large crops because of its advantages of high mobility, high spectral resolution and map integration. In this study, the canopy hyperspectral images and actual AGB data of potato tuber formation, tuber growth and starch accumulation stages were obtained by carrying imaging spectrometer sensors on the UAV platform and drying and weighing method, respectively. Correlation analysis method (CAM), random frog method (RFM) and Gaussian process regression bands analysis tool (GPR-BAT) were used to screen canopy original spectra (COS) and first-order derivative spectra (FDS) for sensitive wavelengths, respectively, combined with partial least squares regression (PLSR) and Gaussian process regression (GPR) techniques to establish AGB estimation models for each fertility period and the estimation effects of different models were compared. The results showed that (1) the effect of combining the two regression techniques based on the characteristic wavelengths screened by the same method for COS and FDS to estimate AGB all changed from good to bad from the tuber formation stage to the starch accumulation stage. (2) Based on the characteristic wavelengths screened by the three methods of FDS respectively, the models constructed by homogeneous regression techniques are more effective than those based on COS accordingly. (3) The number of characteristic wavelengths screened based on COS and FDS using CAM, RFM and GPR-BAT methods were 28, 12, 6 and 12, 23, 10 at the tuber formation stage, 32, 8, 2 and 18, 28, 4 at the tuber growth stage, and 30, 15, 3 and 21, 33, 5 at the starch accumulation stage, respectively. (4) The effect of sensitive wavelengths for AGB estimation based on COS and FDS screened by three methods at each reproductive stage were GPR-BAT, RFM and CAM in descending order. (5) The models based on sensitive wavelengths screened by FDS through the GPR-BAT method at each fertility stage combined with PLSR were more accurate and stable with R-2 of 0. 67, 0. 73 and 0. 65, NRMSE of 16. 63% , 15. 84% and 20. 81% , respectively. This study shows that AGB can be accurately estimated using UAV hyperspectral imaging technology, which provides scientific guidance and reference for achieving dynamic monitoring of potato crop growth.
分类号:
- 相关文献
作者其他论文 更多>>
-
Estimation of Potato Plant Nitrogen Content Based on UAV Hyperspectral Imaging
作者:Fan Yi-guang;Feng Hai-kuan;Liu Yang;Long Hui-ling;Yang Gui-jun;Feng Hai-kuan;Fan Yi-guang;Feng Hai-kuan;Liu Yang;Long Hui-ling;Yang Gui-jun;Liu Yang;Fan Yi-guang;Qian Jian-guo
关键词:UAV; Potato; Hyperspectral; Image features; Plant nitrogen content
-
Estimation of Potato Above-Ground Biomass Based on VGC-AGB Model and Hyperspectral Remote Sensing
作者:Feng Hai-kuan;Zhao Chun-jiang;Feng Hai-kuan;Fan Yi-guang;Yang Gui-jun;Zhao Chun-jiang;Yue Ji-bo
关键词:VGC-AGB model; Hyperspectral remote sensing; Potato; Aboveground biomass (AGB)
-
Monitoring of Nitrogen Content in Winter Wheat Based on UAV Hyperspectral Imagery
作者:Feng Hai-kuan;Fan Yi-guang;Tao Hui-lin;Yang Gui-jun;Zhao Chun-jiang;Feng Hai-kuan;Zhao Chun-jiang;Yang Fu-qin
关键词:Unmanned aerial vehicle; Winter wheat; Hyperspectral; Nitrogen content; Stepwise regression; Spectral feature parameters
-
Estimation of Nitrogen Content in Potato Plants Based on Spectral Spatial Characteristics
作者:Fan Yi-guang;Feng Hai-kuan;Liu Yang;Bian Ming-bo;Zhao Yu;Yang Gui-jun;Feng Hai-kuan;Fan Yi-guang;Feng Hai-kuan;Liu Yang;Bian Ming-bo;Zhao Yu;Yang Gui-jun;Liu Yang;Fan Yi-guang;Qian Jian-guo
关键词:Unmanned aerial vehicle; Potato; Plantnitrogen content; Vegetation indices; High frequency information
-
Leaf Area Index Estimation Based on UAV Hyperspectral Band Selection
作者:Kong Yu-ru;Wang Li-juan;Xu Yi;Liang Liang;Xu Lu;Zhang Qing-qi;Kong Yu-ru;Feng Hai-kuan;Yang Xiao-dong
关键词:Unmanned aerial vehicle (UAV); Hyperspectral image; Band selection; Winter wheat; Leaf area index
-
Monitoring Nitrogen Nutrition and Grain Protein Content of Rice Based on Ensemble Learning
作者:Zhang Jie;Xu Bo;Feng Hai-kuan;Wang Jiao-jiao;Ming Shi-kang;Song Xiao-yu;Zhang Jie;Jing Xia;Fu You-qiang
关键词:Hyperspectral remote sensing; Rice grain protein; Machine Learning; Ensemble algorithms; Adaboost; Random forest
-
Comparison of Machine Learning Algorithms for Remote Sensing Monitoring of Rice Yields
作者:Jing Xia;Zhang Jie;Zhang Jie;Wang Jiao-jiao;Ming Shi-kang;Feng Hai-kuan;Song Xiao-yu;Fu You-qiang
关键词:Hyperspectral remote sensing; Rice yield estimation; Bayesian ridge regression; Support vector regression