Dynamic monitoring of NDVI in wheat agronomy and breeding trials using an unmanned aerial vehicle

被引:179
|
作者
Duan, T. [1 ,2 ]
Chapman, S. C. [1 ,3 ]
Guo, Y. [2 ]
Zheng, B. [1 ]
机构
[1] CSIRO Agr & Food, Queensland Biosci Precinct, 306 Carmody Rd, St Lucia, Qld 4067, Australia
[2] China Agr Univ, Coll Resources & Environm Sci, Beijing 100193, Peoples R China
[3] Univ Queensland, Sch Agr & Food Sci, Gatton, Qld 4343, Australia
关键词
High-throughput; Plot segmentation; Unmanned aerial vehicle; Image processing; Vegetative index; DIFFERENCE VEGETATION INDEX; WINTER-WHEAT; GRAIN-YIELD; CANOPY STRUCTURE; LOW-ALTITUDE; STAY-GREEN; BIOMASS; QUANTIFICATION; PARAMETERS; MODELS;
D O I
10.1016/j.fcr.2017.05.025
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
While new technologies can capture high-resolution normalized difference vegetation index (NDVI), a surrogate for biomass and leaf greenness, it is a challenge to efficiently apply this technology in a large breeding program. Here we validate a high-throughput phenotyping platform to dynamically monitor NDVI during the growing season for the contrasting wheat cultivars and managements. The images were rapidly captured (approximately 1 ha in 10 min) by an unmanned aerial vehicle (UAV) carrying a multi-spectral camera (RedEdge) at low altitude (30-50 m, 2-5 cm(2) pixel size). NDVIs for individual plots were extracted from the reflectance at Red and Near Infrared wavelengths represented in a reconstructed and segmented ortho-mosaic. NDVI measured by UAV and RedEdge camera were strongly correlated with those measured by hand held GreenSeeker (R-2 = 0.85) but were offset with UAV readings about 0.2 units higher and more compressed. The high-throughput phenotyping platform captured the variation of NDVI among cultivars and treatments (i.e. irrigation, nitrogen and sowing). During the growing season, the NDVI approached saturation around flowering time (similar to 0.92), then gradually decreased until maturity (similar to 0.35). Strong correlations were found between image NDVI around flowering time and final yield (R-2 = 0.82). Given that the image NDVI includes signals from background (soil and senescenced leaves), ground cover from a high resolution hand-held camera was used to adjust the NDVI from UAV. This slightly increased the correlation between adjusted NDVI and yield (R-2 = 0.87). The high-throughput phenotyping platform in this study can be used in agronomy, physiology and breeding to explore the complex interaction of genotype, environment and management. Data fusion from ground and aerial sampling improved the accuracy of low resolution data to integrate observations across multiple scales.
引用
收藏
页码:71 / 80
页数:10
相关论文
共 50 条
  • [1] Monitoring Dynamic Deformation of Building Using Unmanned Aerial Vehicle
    Ge, Yongquan
    Yu, Xianzhi
    Chen, Mingzhi
    Yu, Chengxin
    Liu, Yingchun
    Zhang, Guojian
    MATHEMATICAL PROBLEMS IN ENGINEERING, 2021, 2021
  • [2] Monitoring Wheat Fusarium Head Blight Using Unmanned Aerial Vehicle Hyperspectral Imagery
    Liu, Linyi
    Dong, Yingying
    Huang, Wenjiang
    Du, Xiaoping
    Ma, Huiqin
    REMOTE SENSING, 2020, 12 (22) : 1 - 21
  • [3] Precise Drought Threshold Monitoring in Winter Wheat Using the Unmanned Aerial Vehicle Thermal Method
    Liu, Hongjie
    Song, Wenlong
    Lv, Juan
    Gui, Rongjie
    Shi, Yangjun
    Lu, Yizhu
    Li, Mengyi
    Chen, Long
    Chen, Xiuhua
    REMOTE SENSING, 2024, 16 (04)
  • [4] Long-Term Assessment of NDVI Dynamics in Winter Wheat (Triticum aestivum) Using a Small Unmanned Aerial Vehicle
    Atanasov, Asparuh I.
    Mihova, Gallina M.
    Atanasov, Atanas Z.
    Vladul, Valentin
    AGRICULTURE-BASEL, 2025, 15 (04):
  • [5] Multi-temporal monitoring of wheat growth by using images from satellite and unmanned aerial vehicle
    Du Mengmeng
    Noboru, Noguchi
    Atsushi, Itoh
    Yukinori, Shibuya
    INTERNATIONAL JOURNAL OF AGRICULTURAL AND BIOLOGICAL ENGINEERING, 2017, 10 (05) : 1 - 13
  • [6] Autonomous Detection of Mosquito-breeding Habitats using an Unmanned Aerial Vehicle
    Dias, T. M.
    Alves, V. C.
    Alves Junior, H. M.
    Pinheiro, L. F.
    Pontes, R. S. G.
    Araujo, G. M.
    Lima, A. A.
    Prego, T. M.
    15TH LATIN AMERICAN ROBOTICS SYMPOSIUM 6TH BRAZILIAN ROBOTICS SYMPOSIUM 9TH WORKSHOP ON ROBOTICS IN EDUCATION (LARS/SBR/WRE 2018), 2018, : 351 - 356
  • [7] Nitrogen Monitoring of Winter Wheat Based on Unmanned Aerial Vehicle Remote Sensing Image
    Liu C.
    Wang Z.
    Chen Z.
    Zhou L.
    Yue X.
    Miao Y.
    Chen, Zhichao (logczc@163.com), 2018, Chinese Society of Agricultural Machinery (49): : 207 - 214
  • [8] Unmanned Aerial Vehicle Framework for Algae Monitoring
    De Almeida, Aline Gabriel
    Do Nascimento, Eduardo Vieira
    Alvarez, Isaac Gaetani
    Correa Kim, Pedro Henrique
    Da Rocha, Lidia Gianne Souza
    Teixeira Vivaldini, Kelen Cristiane
    2021 LATIN AMERICAN ROBOTICS SYMPOSIUM / 2021 BRAZILIAN SYMPOSIUM ON ROBOTICS / 2021 WORKSHOP OF ROBOTICS IN EDUCATION (LARS-SBR-WRE 2021), 2021, : 84 - 89
  • [9] Dynamic Obstacle Avoidance for Unmanned Aerial Vehicle Using Dynamic Vision Sensor
    Zhang, Xiangyu
    Tie, Junbo
    Li, Jianfeng
    Hu, Yu
    Liu, Shifeng
    Li, Xinpeng
    Li, Ziteng
    Yu, Xintong
    Zhao, Jingyue
    Wan, Zhong
    Zhang, Guangda
    Wang, Lei
    ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING, ICANN 2023, PART X, 2023, 14263 : 161 - 173
  • [10] Unmanned aerial vehicle for fire surveillance and monitoring
    Madridano, A.
    Campos, S.
    Al-Kaff, A.
    Garcia, A.
    Martin, D.
    Escalera, A.
    REVISTA IBEROAMERICANA DE AUTOMATICA E INFORMATICA INDUSTRIAL, 2020, 17 (03): : 254 - 263