Quantifying Leaf Chlorophyll Concentration of Sorghum from Hyperspectral Data Using Derivative Calculus and Machine Learning

被引:64
|
作者
Bhadra, Sourav [1 ,2 ]
Sagan, Vasit [1 ,2 ]
Maimaitijiang, Maitiniyazi [1 ,2 ]
Maimaitiyiming, Matthew [1 ,2 ]
Newcomb, Maria [3 ]
Shakoor, Nadia [4 ]
Mockler, Todd C. [4 ]
机构
[1] St Louis Univ, Geospatial Inst, St Louis, MO 63108 USA
[2] St Louis Univ, Dept Earth & Atmospher Sci, St Louis, MO 63108 USA
[3] Univ Arizona, Sch Plant Sci, Tucson, AZ 85721 USA
[4] Donald Danforth Plant Sci Ctr, St Louis, MO 63132 USA
关键词
chlorophyll concentration; fractional derivatives; hyperspectral spectroscopy; machine learning; extreme learning regression; NATURE-RESERVE ELWNNR; VEGETATION INDEXES; NONDESTRUCTIVE ESTIMATION; SPECTRAL REFLECTANCE; FEATURE-SELECTION; PIGMENT CONTENT; NEURAL-NETWORK; FOOD SECURITY; RETRIEVAL; NITROGEN;
D O I
10.3390/rs12132082
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Leaf chlorophyll concentration (LCC) is an important indicator of plant health, vigor, physiological status, productivity, and nutrient deficiencies. Hyperspectral spectroscopy at leaf level has been widely used to estimate LCC accurately and non-destructively. This study utilized leaf-level hyperspectral data with derivative calculus and machine learning to estimate LCC of sorghum. We calculated fractional derivative (FD) orders starting from 0.2 to 2.0 with 0.2 order increments. Additionally, 43 common vegetation indices (VIs) were calculated from leaf spectral reflectance factor to make comparisons with reflectance-based data. Within the modeling pipeline, three feature selection methods were assessed: Pearson's correlation coefficient (PCC), partial least squares based variable importance in the projection (VIP), and random forest-based mean decrease impurity (MDI). Finally, we used partial least squares regression (PLSR), random forest regression (RFR), support vector regression (SVR), and extreme learning regression (ELR) to estimate the LCC of sorghum. Results showed that: (1) increasing derivative order can show improved model performance until certain order for reflectance-based analysis; however, it is inconclusive to state that a particular order is optimal for estimating LCC of sorghum; (2) VI-based modeling outperformed derivative augmented reflectance factor-based modeling; (3) mean decrease impurity was found effective in selecting sensitive features from large feature space (reflectance-based analysis), whereas simple Pearson's correlation coefficient worked better with smaller feature space (VI-based analysis); and (4) SVR outperformed all other models within reflectance-based analysis; alternatively, ELR with VIs from original reflectance yielded slightly better results compared to all other models.
引用
收藏
页数:26
相关论文
共 50 条
  • [1] Machine learning as a tool to predict potassium concentration in soybean leaf using hyperspectral data
    Furlanetto, Renato Herrig
    Crusiol, Luis Guilherme Teixeira
    Goncalves, Joao Vitor Ferreira
    Nanni, Marcos Rafael
    de Oliveira Junior, Adilson
    de Oliveira, Fabio Alvares
    Sibaldelli, Rubson Natal Ribeiro
    PRECISION AGRICULTURE, 2023, 24 (06) : 2264 - 2292
  • [2] Machine learning as a tool to predict potassium concentration in soybean leaf using hyperspectral data
    Renato Herrig Furlanetto
    Luís Guilherme Teixeira Crusiol
    João Vitor Ferreira Gonçalves
    Marcos Rafael Nanni
    Adilson de Oliveira Junior
    Fábio Alvares de Oliveira
    Rubson Natal Ribeiro Sibaldelli
    Precision Agriculture, 2023, 24 : 2264 - 2292
  • [3] Using Machine Learning for Estimating Rice Chlorophyll Content from In Situ Hyperspectral Data
    An, Gangqiang
    Xing, Minfeng
    He, Binbin
    Liao, Chunhua
    Huang, Xiaodong
    Shang, Jiali
    Kang, Haiqi
    REMOTE SENSING, 2020, 12 (18)
  • [4] RETRIEVAL OF LEAF AREA INDEX AND LEAF CHLOROPHYLL CONTENT FROM HYPERSPECTRAL DATA USING DEEP LEARNING NETWORKS
    Hu, B.
    Jung, W. M.
    Liu, J.
    Shang, J.
    XXIV ISPRS CONGRESS: IMAGING TODAY, FORESEEING TOMORROW, COMMISSION III, 2022, 43-B3 : 397 - 404
  • [5] Hyperspectral reflectance sensing for quantifying leaf chlorophyll content in wasabi leaves using spectral pre-processing techniques and machine learning algorithms
    Sonobe, Rei
    Yamashita, Hiroto
    Mihara, Harumi
    Morita, Akio
    Ikka, Takashi
    INTERNATIONAL JOURNAL OF REMOTE SENSING, 2021, 42 (04) : 1311 - 1329
  • [6] Estimating Chlorophyll-a Concentration from Hyperspectral Data Using Various Machine Learning Techniques: A Case Study at Paldang Dam, South Korea
    Im, GwangMuk
    Lee, Dohyun
    Lee, Sanghun
    Lee, Jongsu
    Lee, Sungjong
    Park, Jungsu
    Heo, Tae-Young
    WATER, 2022, 14 (24)
  • [7] Retrieval of chlorophyll a concentration from a fluorescence enveloped area using hyperspectral data
    Liu, Fen-Fen
    Chen, Chu-Qun
    Tang, Shi-Lin
    Liu, Da-Zhao
    INTERNATIONAL JOURNAL OF REMOTE SENSING, 2011, 32 (13) : 3611 - 3623
  • [8] Hyperspectral estimation of chlorophyll density in winter wheat using fractional-order derivative combined with machine learning
    Yang, Chenbo
    Feng, Meichen
    Bai, Juan
    Sun, Hui
    Bi, Rutian
    Song, Lifang
    Wang, Chao
    Zhao, Yu
    Yang, Wude
    Xiao, Lujie
    Zhang, Meijun
    Song, Xiaoyan
    FRONTIERS IN PLANT SCIENCE, 2025, 15
  • [9] Winter wheat chlorophyll content retrieval based on machine learning using in situ hyperspectral data
    Wang, Tianli
    Gao, Maofang
    Cao, Chunling
    You, Jiong
    Zhang, Xiwang
    Shen, Lanzhi
    COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2022, 193
  • [10] Species classification from hyperspectral leaf information using machine learning approaches
    Song, Guangman
    Wang, Quan
    ECOLOGICAL INFORMATICS, 2023, 76