High-resolution multispectral imagery and LiDAR point cloud fusion for the discrimination and biophysical characterisation of vegetable crops at different levels of nitrogen

被引:4
|
作者
Nidamanuri, Rama Rao [1 ]
Jayakumari, Reji [1 ]
Ramiya, Anandakumar M. [1 ]
Astor, Thomas [2 ]
Wachendorf, Michael [2 ]
Buerkert, Andreas [3 ]
机构
[1] Govt India, Indian Inst Space Sci & Technol, Dept Earth & Space Sci, Dept Space, Thiruvananthapuram 695547, India
[2] Univ Kassel, Grassland Sci & Renewable Plant Resources, Organ Agr Sci, D-37213 Witzenhausen, Germany
[3] Univ Kassel, Organ Plant Prod & Agroecosyst Res Trop & Subtrop, Organ Agr Sci, D-37213 Witzenhausen, Germany
关键词
Precision agriculture; Supervised crop classification; Crown area and biomass; Data fusion; LiDAR point cloud; Biophysical characterisation; RANDOM FOREST; BIOMASS; INDEXES; VARIABLES; UNIQUE; FAPAR;
D O I
10.1016/j.biosystemseng.2022.08.005
中图分类号
S2 [农业工程];
学科分类号
0828 ;
摘要
High-resolution remote sensing data has expanded the scope, precision, and scale of remote sensing applications in agriculture. Availability of spatial information at actionable field units is vital for using remote sensing data in agriculture. Crop discrimination and biophysical characterisation sensitive to nutrient levels have not been addressed at the patch level. This work investigates the synergetic application of high-resolution satellite imagery and terrestrial LiDAR point cloud for object-level discrimination and biophysical characterisation of a few crops at different nitrogen (N) levels. To this end, cabbage, eggplant, and tomato at three levels of N were grown on the experimental fields of the University of Agricultural Sciences, Bengaluru, India, in 2017. Fusing the multispectral imagery (WorldView-III) and LiDAR point cloud (terrestrial laser scanner) at the feature level, object-level supervised classification and estimation of two critical biophysical pa-rameters (crown area and biomass) were performed using the support vector machine (SVM) and Random Forests (RF) algorithms with reference to different N levels. Results suggest discrimination of vegetable crops with high accuracy (92%), about 20% higher than the individual sensors, from the fused imagery sensitive to N levels. The quality of re-trievals indicates a contrasting pattern wherein the accuracy of the crown area is high with the LiDAR point cloud at various N levels. For the biomass, there is no perceptible differ-entiation of N levels within a crop. The accuracy of crop classification with reference to N levels is similar from both RF and SVM algorithms. However, RF algorithm offered sub-stantially higher classification results when the N status is ignored. In contrast, the quality of biophysical modelling is very high and is similar from both the algorithms. Weather conditions and sub-field level environment-induced variations in the crop growth likely are the factors responsible for the reduced sensitivity of remote sensing data to crop N levels at the patch level. (c) 2022 IAgrE. Published by Elsevier Ltd. All rights reserved.
引用
收藏
页码:177 / 195
页数:19
相关论文
共 27 条
  • [21] High-resolution imagery acquired from an unmanned platform to estimate biophysical and geometrical parameters of olive trees under different irrigation regimes
    Caruso, Giovanni
    Zarco-Tejada, Pablo J.
    Gonzalez-Dugo, Victoria
    Moriondo, Marco
    Tozzini, Letizia
    Palai, Giacomo
    Rallo, Giovanni
    Hornero, Alberto
    Primicerio, Jacopo
    Gucci, Riccardo
    [J]. PLOS ONE, 2019, 14 (01):
  • [22] Improving 3D registration by upsampling of sparse point cloud through fusion with high-resolution 2D image
    Kwon, Hyukseong
    Kim, Kyungnam
    Dolne, Jean
    [J]. UNCONVENTIONAL AND INDIRECT IMAGING, IMAGE RECONSTRUCTION, AND WAVEFRONT SENSING 2017, 2017, 10410
  • [23] Creating high-resolution bare-earth digital elevation models (DEMs) from stereo imagery in an area of densely vegetated deciduous forest using combinations of procedures designed for lidar point cloud filtering
    DeWitt, Jessica D.
    Warner, Timothy A.
    Chirico, Peter G.
    Bergstresser, Sarah E.
    [J]. GISCIENCE & REMOTE SENSING, 2017, 54 (04) : 552 - 572
  • [24] Controllably Deep Supervision and Multi-Scale Feature Fusion Network for Cloud and Snow Detection Based on Medium- and High-Resolution Imagery Dataset
    Zhang, Guangbin
    Gao, Xianjun
    Yang, Yuanwei
    Wang, Mingwei
    Ran, Shuhao
    [J]. REMOTE SENSING, 2021, 13 (23)
  • [25] Improving Biomass and Grain Yield Prediction of Wheat Genotypes on Sodic Soil Using Integrated High-Resolution Multispectral, Hyperspectral, 3D Point Cloud, and Machine Learning Techniques
    Choudhury, Malini Roy
    Das, Sumanta
    Christopher, Jack
    Apan, Armando
    Chapman, Scott
    Menzies, Neal W.
    Dang, Yash P.
    [J]. REMOTE SENSING, 2021, 13 (17)
  • [26] Impact of aerosol layering, complex aerosol mixing, and cloud coverage on high-resolution MAIAC aerosol optical depth measurements: Fusion of lidar, AERONET, satellite, and ground-based measurements
    Rogozovsky, Irina
    Ansmann, Albert
    Althausen, Dietrich
    Heese, Birgit
    Engelmann, Ronny
    Hofer, Julian
    Baars, Holger
    Schechner, Yoav
    Lyapustin, Alexei
    Chudnovsky, Alexandra
    [J]. ATMOSPHERIC ENVIRONMENT, 2021, 247
  • [27] Identification and Quantification of Surface Depressions on Grassy Land Surfaces of Different Topographic Attributes Using High-Resolution Terrestrial Laser Scanning Point Cloud and Triangulated Irregular Network
    Meneses, Diego. M. M.
    Zheng, Lin
    Guo, Qizhong
    [J]. JOURNAL OF HYDROLOGIC ENGINEERING, 2023, 28 (04)