Improving chlorophyll content detection to suit maize dynamic growth effects by deep features of hyperspectral data

被引:16
作者
Zhao, Ruomei [1 ]
An, Lulu [1 ]
Tang, Weijie [2 ]
Qiao, Lang [1 ]
Wang, Nan [2 ]
Li, Minzan [1 ,3 ]
Sun, Hong [1 ,2 ]
Liu, Guohui [1 ]
机构
[1] China Agr Univ, Key Lab Smart Agr Syst Integrat, Minist Educ, Beijing 100083, Peoples R China
[2] China Agr Univ, Key Lab Agr Informat Acquisit Technol, Minist Agr & Rural Affairs, Beijing 100083, Peoples R China
[3] Yantai Inst China Agr Univ, Shandong 264670, Peoples R China
关键词
Maize chlorophyll content; Hyperspectral; Dynamic growth effects; LSTM; Deep feature extraction; LEAF NITROGEN CONCENTRATION; REFLECTANCE SPECTRA; NEURAL-NETWORKS; YIELD;
D O I
10.1016/j.fcr.2023.108929
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Real-time leaf chlorophyll content (LCC) is critical for managing farm inputs and monitoring crop growth, productivity and quality of the yield. Visible-near infrared spectroscopy is a non-destructive method for the LCC detection, which plays an increasingly substantial role in the high-throughput monitoring in field. Some detection methods use single or fixed bands, which are not sensitive to LCC at each growth stage and obtain low accuracy and robustness. Thus, we aim to improve the robustness of LCC detection models by exploring deep features of hyperspectral data which could be suitable for the dynamic growth effects. In experiments, the hyperspectral data of four growth stages of jointing, tasseling, silking and blister stages were measured in 2020 and 2021, respectively. Firstly, the LCC variation and spectral response at each growth stage were analyzed. Changes existed at different stages in typical vegetation indices (VIs), which included normalized difference vegetation index (NDVI), normalized difference red edge index (NDRE) and red edge position (REP). Secondly, to capture the features sensitive to LCC at each growth stage, a novel method was proposed to explore deep features hidden among the sensitive wavelengths by combining methods of competitive adaptive reweighted sampling (CARS) and long short-term memory (LSTM), which is labeled as CARS-LSTM. Finally, in order to compare the LCC detection performance of typical VIs and our proposed deep features, the partial least squares regression models were established based on NDVI, NDRE, REP, CARS, LSTM and hybrid deep features of CARS-LSTM, respectively. Result showed that REP performed better than NDVI and NDRE and obtained determination coefficient of prediction set (R-2(P)) and root mean square error of prediction set (RMSEP) with 0.48 and 4.52 mg/L, respectively, which was possibly due to consistence between REP and LCC and the saturation of NDVI. The wavelengths selected by CARS obtained R-2(P) and RMSEP of 0.71 and 3.32 mg/L, respectively, and achieved better detection results than REP; The R-2(P) values of each growth stage were in the range of 0.41-0.72 and the RMSEP values were in the range of 1.23-5.40 mg/L. The proposed deep features of CARS-LSTM achieved the best detection results with R-2(P) of 0.94 and RMSEP of 1.54 mg/L; The R-2(P) values of each growth stage were in the range of 0.76-0.96 and the RMSEP values were in the range of 0.89-2.52 mg/L. The research demonstrated that the hybrid deep features of CARS-LSTM could capture the complex spectral changes and help improve the relationship between LCC and spectral data. The proposed method can improve the detection accuracy and robustness of LCC to suit the dynamic growth effects and provide guidance for field monitoring and management.
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页数:13
相关论文
共 52 条
[1]   Retrieval of aboveground crop nitrogen content with a hybrid machine learning method [J].
Berger, Katja ;
Verrelst, Jochem ;
Feret, Jean-Baptiste ;
Hank, Tobias ;
Wocher, Matthias ;
Mauser, Wolfram ;
Camps-Valls, Gustau .
INTERNATIONAL JOURNAL OF APPLIED EARTH OBSERVATION AND GEOINFORMATION, 2020, 92
[2]   Wheat yield predictions at a county and field scale with deep learning, machine learning, and google earth engine [J].
Cao, Juan ;
Zhang, Zhao ;
Luo, Yuchuan ;
Zhang, Liangliang ;
Zhang, Jing ;
Li, Ziyue ;
Tao, Fulu .
EUROPEAN JOURNAL OF AGRONOMY, 2021, 123
[3]   Main frequency band of blast vibration signal based on wavelet packet transform [J].
Chen, Guan ;
Li, Qi-Yue ;
Li, Dian-Qing ;
Wu, Zheng-Yu ;
Liu, Yong .
APPLIED MATHEMATICAL MODELLING, 2019, 74 :569-585
[4]   Estimation of nitrogen and carbon content from soybean leaf reflectance spectra using wavelet analysis under shade stress [J].
Chen, Junxu ;
Li, Fan ;
Wang, Rui ;
Fan, Yuanfang ;
Raza, Muhammad Ali ;
Liu, Qinlin ;
Wang, Zhonglin ;
Cheng, Yajiao ;
Wu, Xiaoling ;
Yang, Feng ;
Yang, Wenyu .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2019, 156 :482-489
[5]   Crop reflectance measurements for nitrogen deficiency detection in a soilless tomato crop [J].
Elvanidi, A. ;
Katsoulas, N. ;
Augoustaki, D. ;
Loulou, I. ;
Kittas, C. .
BIOSYSTEMS ENGINEERING, 2018, 176 :1-11
[6]  
Feng L., 2021, FRONT PLANT SCI, V12
[7]   Evaluating canopy spectral reflectance vegetation indices to estimate nitrogen use traits in hard winter wheat [J].
Frels, Katherine ;
Guttieri, Mary ;
Joyce, Brian ;
Leavitt, Bryan ;
Baenziger, P. Stephen .
FIELD CROPS RESEARCH, 2018, 217 :82-92
[8]   Hyperspectral canopy sensing of paddy rice aboveground biomass at different growth stages [J].
Gnyp, Martin L. ;
Miao, Yuxin ;
Yuan, Fei ;
Ustin, Susan L. ;
Yu, Kang ;
Yao, Yinkun ;
Huang, Shanyu ;
Bareth, Georg .
FIELD CROPS RESEARCH, 2014, 155 :42-55
[9]   Estimation of foliar nitrogen of rubber trees using hyperspectral reflectance with feature bands [J].
Guo, Peng-Tao ;
Li, Mao-Fen ;
Luo, Wei ;
Cha, Zheng-Zao .
INFRARED PHYSICS & TECHNOLOGY, 2019, 102
[10]   A Review of Deep Learning Models for Time Series Prediction [J].
Han, Zhongyang ;
Zhao, Jun ;
Leung, Henry ;
Ma, King Fai ;
Wang, Wei .
IEEE SENSORS JOURNAL, 2021, 21 (06) :7833-7848