Machine Learning Optimised Hyperspectral Remote Sensing Retrieves Cotton Nitrogen Status

被引:33
|
作者
Marang, Ian J. [1 ]
Filippi, Patrick [1 ]
Weaver, Tim B. [2 ]
Evans, Bradley J. [3 ]
Whelan, Brett M. [1 ]
Bishop, Thomas F. A. [1 ]
Murad, Mohammed O. F. [1 ]
Al-Shammari, Dhahi [1 ]
Roth, Guy [1 ]
机构
[1] Univ Sydney, Sydney Inst Agr, Sch Life & Environm Sci, Fac Sci, Sydney, NSW 2006, Australia
[2] CSIRO Agr & Food, Australian Cotton Res Inst, Locked Bag 59, Narrabri, NSW 2390, Australia
[3] Univ Sydney, Sch Phys, Fac Sci, Sydney, NSW 2006, Australia
关键词
remote sensing; hyperspectral; multispectral; machine learning; nitrogen; cotton; LEAF CHLOROPHYLL CONTENT; RED EDGE; WINTER-WHEAT; REFLECTANCE; VEGETATION; INDEXES; SENTINEL-2; PRECISION; YIELD; PREDICTION;
D O I
10.3390/rs13081428
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Hyperspectral imaging spectrometers mounted on unmanned aerial vehicle (UAV) can capture high spatial and spectral resolution to provide cotton crop nitrogen status for precision agriculture. The aim of this research was to explore machine learning use with hyperspectral datacubes over agricultural fields. Hyperspectral imagery was collected over a mature cotton crop, which had high spatial (similar to 5.2 cm) and spectral (5 nm) resolution over the spectral range 475-925 nm that allowed discrimination of individual crop rows and field features as well as a continuous spectral range for calculating derivative spectra. The nominal reflectance and its derivatives clearly highlighted the different treatment blocks and were strongly related to N concentration in leaf and petiole samples, both in traditional vegetation indices (e.g., Vogelman 1, R-2 = 0.8) and novel combinations of spectra (R-2 = 0.85). The key hyperspectral bands identified were at the red-edge inflection point (695-715 nm). Satellite multispectral was compared against the UAV hyperspectral remote sensing's performance by testing the ability of Sentinel MSI to predict N concentration using the bands in VIS-NIR spectral region. The Sentinel 2A Green band (B3; mid-point 559.8 nm) explained the same amount of variation in N as the hyperspectral data and more than the Sentinel Red Edge Point 1 (B5; mid-point 704.9 nm) with the lower 10 m resolution Green band reporting an R-2 = 0.85, compared with the R-2 = 0.78 of downscaled Sentinel Red Edge Point 1 at 5 m. The remaining Sentinel bands explained much lower variation (maximum was NIR at R-2 = 0.48). Investigation of the red edge peak region in the first derivative showed strong promise with RIDAmid (R-2 = 0.81) being the best index. The machine learning approach narrowed the range of bands required to investigate plant condition over this trial site, greatly improved processing time and reduced processing complexity. While Sentinel performed well in this comparison and would be useful in a broadacre crop production context, the impact of pixel boundaries relative to a region of interest and coarse spatial and temporal resolution impacts its utility in a research capacity.
引用
收藏
页数:19
相关论文
共 50 条
  • [21] Monitoring soil nutrients using machine learning based on UAV hyperspectral remote sensing
    Liu, Kai
    Wang, Yufeng
    Peng, Zhiqing
    Xu, Xinxin
    Liu, Jingjing
    Song, Yuehui
    Di, Huige
    Hua, Dengxin
    INTERNATIONAL JOURNAL OF REMOTE SENSING, 2024, 45 (14) : 4897 - 4921
  • [22] UAVs, Hyperspectral Remote Sensing, and Machine Learning Revolutionizing Reef Monitoring
    Parsons, Mark
    Bratanov, Dmitry
    Gaston, Kevin J.
    Gonzalez, Felipe
    SENSORS, 2018, 18 (07)
  • [23] An overview of crop nitrogen status assessment using hyperspectral remote sensing: Current status and perspectives
    Fu, Yuanyuan
    Yang, Guijun
    Pu, Ruiliang
    Li, Zhenhai
    Li, Heli
    Xu, Xingang
    Song, Xiaoyu
    Yang, Xiaodong
    Zhao, Chunjiang
    EUROPEAN JOURNAL OF AGRONOMY, 2021, 124
  • [24] Airborne hyperspectral imaging of nitrogen deficiency on crop traits and yield of maize by machine learning and radiative transfer modeling
    Wang, Sheng
    Guan, Kaiyu
    Wang, Zhihui
    Ainsworth, Elizabeth A.
    Zheng, Ting
    Townsend, Philip A.
    Liu, Nanfeng
    Nafziger, Emerson
    Masters, Michael D.
    Li, Kaiyuan
    Wu, Genghong
    Jiang, Chongya
    INTERNATIONAL JOURNAL OF APPLIED EARTH OBSERVATION AND GEOINFORMATION, 2021, 105
  • [25] Machine learning in geosciences and remote sensing
    David J.Lary
    Amir H.Alavi
    Amir H.Gandomi
    Annette L.Walker
    Geoscience Frontiers, 2016, (01) : 3 - 10
  • [26] Ground-based sensing system for cotton nitrogen status determination
    Sui, R.
    Thomasson, J. A.
    TRANSACTIONS OF THE ASABE, 2006, 49 (06) : 1983 - 1991
  • [27] Machine learning in geosciences and remote sensing
    Lary, David J.
    Alavi, Amir H.
    Gandomi, Amir H.
    Walker, Annette L.
    GEOSCIENCE FRONTIERS, 2016, 7 (01) : 3 - 10
  • [28] Estimation of Cotton Nitrogen Content Based on Multi-Angle Hyperspectral Data and Machine Learning Models
    Zhou, Xiaoting
    Yang, Mi
    Chen, Xiangyu
    Ma, Lulu
    Yin, Caixia
    Qin, Shizhe
    Wang, Lu
    Lv, Xin
    Zhang, Ze
    REMOTE SENSING, 2023, 15 (04)
  • [29] Soil Fertility Status Assessment Using Hyperspectral Remote Sensing
    Patel, Ajay Kumar
    Ghosh, Jayanta Kumar
    REMOTE SENSING FOR AGRICULTURE, ECOSYSTEMS, AND HYDROLOGY XXI, 2019, 11149
  • [30] Drone remote sensing of wheat N using hyperspectral sensor and machine learning
    Rabi N. Sahoo
    R. G. Rejith
    Shalini Gakhar
    Rajeev Ranjan
    Mahesh C. Meena
    Abir Dey
    Joydeep Mukherjee
    Rajkumar Dhakar
    Abhishek Meena
    Anchal Daas
    Subhash Babu
    Pravin K. Upadhyay
    Kapila Sekhawat
    Sudhir Kumar
    Mahesh Kumar
    Viswanathan Chinnusamy
    Manoj Khanna
    Precision Agriculture, 2024, 25 : 704 - 728