UAV Multisensory Data Fusion and Multi-Task Deep Learning for High-Throughput Maize Phenotyping

被引:21
作者
Nguyen, Canh [1 ,2 ,3 ]
Sagan, Vasit [1 ,2 ]
Bhadra, Sourav [1 ,2 ]
Moose, Stephen [4 ]
机构
[1] Taylor Geospatial Inst, St Louis, MO 63108 USA
[2] St Louis Univ, Dept Earth & Atmospher Sci, St Louis, MO 63108 USA
[3] Univ Cent Missouri, Dept Aviat, Warrensburg, MO 64093 USA
[4] Univ Illinois, Dept Crop Sci & Technol, Urbana, IL 61801 USA
基金
美国国家科学基金会;
关键词
UAV; data fusion; multi-task deep learning; high-throughput phenotyping; hyperspectral; LiDAR; GeoAI; HYPERSPECTRAL VEGETATION INDEXES; UNMANNED AERIAL VEHICLE; SPECTRAL REFLECTANCE; CHLOROPHYLL FLUORESCENCE; WATER-STRESS; GRAIN-YIELD; APPARENT REFLECTANCE; CANOPY TEMPERATURE; LEVEL MEASUREMENTS; DATA AUGMENTATION;
D O I
10.3390/s23041827
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Recent advances in unmanned aerial vehicles (UAV), mini and mobile sensors, and GeoAI (a blend of geospatial and artificial intelligence (AI) research) are the main highlights among agricultural innovations to improve crop productivity and thus secure vulnerable food systems. This study investigated the versatility of UAV-borne multisensory data fusion within a framework of multi-task deep learning for high-throughput phenotyping in maize. UAVs equipped with a set of miniaturized sensors including hyperspectral, thermal, and LiDAR were collected in an experimental corn field in Urbana, IL, USA during the growing season. A full suite of eight phenotypes was in situ measured at the end of the season for ground truth data, specifically, dry stalk biomass, cob biomass, dry grain yield, harvest index, grain nitrogen utilization efficiency (Grain NutE), grain nitrogen content, total plant nitrogen content, and grain density. After being funneled through a series of radiometric calibrations and geo-corrections, the aerial data were analytically processed in three primary approaches. First, an extended version normalized difference spectral index (NDSI) served as a simple arithmetic combination of different data modalities to explore the correlation degree with maize phenotypes. The extended NDSI analysis revealed the NIR spectra (750-1000 nm) alone in a strong relation with all of eight maize traits. Second, a fusion of vegetation indices, structural indices, and thermal index selectively handcrafted from each data modality was fed to classical machine learning regressors, Support Vector Machine (SVM) and Random Forest (RF). The prediction performance varied from phenotype to phenotype, ranging from R-2 = 0.34 for grain density up to R-2 = 0.85 for both grain nitrogen content and total plant nitrogen content. Further, a fusion of hyperspectral and LiDAR data completely exceeded limitations of single data modality, especially addressing the vegetation saturation effect occurring in optical remote sensing. Third, a multi-task deep convolutional neural network (CNN) was customized to take a raw imagery data fusion of hyperspectral, thermal, and LiDAR for multi-predictions of maize traits at a time. The multi-task deep learning performed predictions comparably, if not better in some traits, with the mono-task deep learning and machine learning regressors. Data augmentation used for the deep learning models boosted the prediction accuracy, which helps to alleviate the intrinsic limitation of a small sample size and unbalanced sample classes in remote sensing research. Theoretical and practical implications to plant breeders and crop growers were also made explicit during discussions in the studies.
引用
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页数:38
相关论文
共 135 条
  • [1] Generating 3D hyperspectral information with lightweight UAV snapshot cameras for vegetation monitoring: From camera calibration to quality assurance
    Aasen, Helge
    Burkart, Andreas
    Bolten, Andreas
    Bareth, Georg
    [J]. ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING, 2015, 108 : 245 - 259
  • [2] Multi-temporal imaging using an unmanned aerial vehicle for monitoring a sunflower crop
    Agueera Vega, Francisco
    Carvajal Ramirez, Fernando
    Perez Saiz, Monica
    Orgaz Rosua, Francisco
    [J]. BIOSYSTEMS ENGINEERING, 2015, 132 : 19 - 27
  • [3] A review of remote sensing methods for biomass feedstock production
    Ahamed, T.
    Tian, L.
    Zhang, Y.
    Ting, K. C.
    [J]. BIOMASS & BIOENERGY, 2011, 35 (07) : 2455 - 2469
  • [4] Anderson S.L., 2019, PLANT PHENOME J, V2, P1, DOI DOI 10.2135/TPPJ2019.02.0004
  • [5] Aerial imagery or on-ground detection? An economic analysis for vineyard crops
    Andujar, Dionisio
    Moreno, Hugo
    Bengochea-Guevara, Jose M.
    de Castro, Ana
    Ribeiro, Angela
    [J]. COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2019, 157 : 351 - 358
  • [6] Arthur D, 2007, PROCEEDINGS OF THE EIGHTEENTH ANNUAL ACM-SIAM SYMPOSIUM ON DISCRETE ALGORITHMS, P1027
  • [7] Spectral reflectance to estimate genetic variation for in-season biomass, leaf chlorophyll, and canopy temperature in wheat
    Babar, MA
    Reynolds, MP
    Van Ginkel, M
    Klatt, AR
    Raun, WR
    Stone, ML
    [J]. CROP SCIENCE, 2006, 46 (03) : 1046 - 1057
  • [8] Assessment of In-Season Cotton Nitrogen Status and Lint Yield Prediction from Unmanned Aerial System Imagery
    Ballester, Carlos
    Hornbuckle, John
    Brinkhoff, James
    Smith, John
    Quayle, Wendy
    [J]. REMOTE SENSING, 2017, 9 (11):
  • [9] Barnes E., 2000, P 5 INT C PREC AGR B, P16
  • [10] A REAPPRAISAL OF THE USE OF DMSO FOR THE EXTRACTION AND DETERMINATION OF CHLOROPHYLLS-A AND CHLOROPHYLLS-B IN LICHENS AND HIGHER-PLANTS
    BARNES, JD
    BALAGUER, L
    MANRIQUE, E
    ELVIRA, S
    DAVISON, AW
    [J]. ENVIRONMENTAL AND EXPERIMENTAL BOTANY, 1992, 32 (02) : 85 - 100