Pixel size of aerial imagery constrains the applications of unmanned aerial vehicle in crop breeding

被引:47
|
作者
Hu, Pengcheng [1 ,2 ]
Guo, Wei [3 ]
Chapman, Scott C. [2 ,4 ]
Guo, Yan [1 ]
Zheng, Bangyou [2 ]
机构
[1] China Agr Univ, Coll Resources & Environm Sci, Beijing 100193, Peoples R China
[2] Queensland Biosci Precinct, CSIRO Agr & Food, 306 Carmody Rd, St Lucia, Qld 4067, Australia
[3] Univ Tokyo, Grad Sch Agr & Life Sci, Inst Sustainable Agroecosyst Serv, Int Field Phenom Res Lab, Tokyo 1880002, Japan
[4] Univ Queensland, Sch Food & Agr Sci, Via Warrego Highway, Gatton, Qld 4343, Australia
基金
中国国家自然科学基金;
关键词
Plant phenotyping; Ground coverage; Remote sensing; Pixel size; UAV; EARLY PLANT VIGOR; GROUND-COVER; SPATIAL-RESOLUTION; CHLOROPHYLL CONTENT; LOW-ALTITUDE; VEGETATION; COTTON; CLASSIFICATION; REFLECTANCE; QUANTIFICATION;
D O I
10.1016/j.isprsjprs.2019.05.008
中图分类号
P9 [自然地理学];
学科分类号
0705 ; 070501 ;
摘要
Image analysis using proximal sensors can help accelerate the selection process in plant breeding and improve the breeding efficiency. However, the accuracies of extracted phenotypic traits, especially those that require image classification, are affected by the pixel size in images. Ground coverage (GC), the ratio of projected to ground vegetation area to total land area, is a simple and important trait to monitor crop growth and development and is often captured by visual-spectrum cameras on multiple platforms from ground-based vehicles to satellites. In this study, we used GC as an example trait and explored its dependency on pixel size. In developing new spring wheat varieties, breeders often aim for rapid GC estimation, which is challenging especially when coverage is low (<25%) in a species with thin leaves (ranging from 2 to 15 mm across). In a wheat trial comprising 28 treatments, high-resolution images were manually taken at ca. 1 m above canopies on seven occasions from emergence to flowering. Using a cubic interpolation algorithm, the original images with small pixel size were degraded into coarse images with large pixel size (from 0.1 to 5.0 cm per pixel, 26 extra levels in total) to mimic the image acquisition at different flight heights of an unmanned aerial vehicle (UAV) based platform. A machine learning based classification model was used to classify pixels of the original images and the corresponding degraded images into either vegetation and background classes, and then computed their GCs. GCs of original images were referred as reference values to their corresponding degraded images. As pixel size increased, GC of the degraded images tended to be underestimated when reference GC was less than about 50% and overestimated for GC > 50%. The greatest errors (about 30%) were observed when reference GCs were around 30% and 70%. Meanwhile, the largest pixel sizes to distinguish between two treatments depended on the difference between GCs of the two treatments and were rapidly increased when differences were greater than the specific values at given significance levels (i.e. about 10%, 8% and 6% for P < 0.01, 0.05 and 0.1, respectively). For wheat, small pixel size (e.g. <0.1 cm) is always required to accurately estimate ground coverage when the most practical flight height is about 20 to 30 m at present. This study provides a guideline to choose appropriate pixel sizes and flight plans to estimate GC and other traits in crop breeding using UAV based HTP platforms.
引用
收藏
页码:1 / 9
页数:9
相关论文
共 50 条
  • [21] Surf zone characterization from Unmanned Aerial Vehicle imagery
    Holman, Rob A.
    Holland, K. Todd
    Lalejini, Dave M.
    Spansel, Steven D.
    OCEAN DYNAMICS, 2011, 61 (11) : 1927 - 1935
  • [22] Surf zone characterization from Unmanned Aerial Vehicle imagery
    Rob A. Holman
    K. Todd Holland
    Dave M. Lalejini
    Steven D. Spansel
    Ocean Dynamics, 2011, 61 : 1927 - 1935
  • [23] Mosaicking of Unmanned Aerial Vehicle Imagery in the Absence of Camera Poses
    Xu, Yuhua
    Ou, Jianliang
    He, Hu
    Zhang, Xiaohu
    Mills, Jon
    REMOTE SENSING, 2016, 8 (03)
  • [24] Use of Unmanned Aerial Vehicle for Pesticide Application in Soybean Crop
    Lopes, Luana de Lima
    da Cunha, Joao Paulo Arantes Rodrigues
    Nomelini, Quintiliano Siqueira Schroden
    AGRIENGINEERING, 2023, 5 (04): : 2049 - 2063
  • [25] Application Method of Unmanned Aerial Vehicle for Crop Monitoring in Korea
    Na, Sang-il
    Park, Chan-won
    So, Kyu-ho
    Ahn, Ho-yong
    Lee, Kyung-do
    KOREAN JOURNAL OF REMOTE SENSING, 2018, 34 (05) : 829 - 846
  • [26] Crop mapping in smallholder farms using unmanned aerial vehicle imagery and geospatial cloud computing infrastructure
    Gokool, Shaeden
    Mahomed, Maqsooda
    Brewer, Kiara
    Naiken, Vivek
    Clulow, Alistair
    Sibanda, Mbulisi
    Mabhaudhi, Tafadzwanashe
    HELIYON, 2024, 10 (05)
  • [27] Development of Biomass Evaluation Model of Winter Crop Using RGB imagery Based on Unmanned Aerial Vehicle
    Na, Sang-il
    Park, Chan-won
    So, Kyu-ho
    Ahn, Ho-yong
    Lee, Kyung-do
    KOREAN JOURNAL OF REMOTE SENSING, 2018, 34 (05) : 709 - 720
  • [28] Unmanned Aerial Vehicle Communications for Civil Applications: A Review
    Ghamari, Mohammad
    Rangel, Pablo
    Mehrubeoglu, Mehrube
    Tewolde, Girma S.
    Sherratt, R. Simon
    IEEE ACCESS, 2022, 10 : 102492 - 102531
  • [29] Recent applications of unmanned aerial imagery in natural resource management
    Shahbazi, Mozhdeh
    Theau, Jerome
    Menard, Patrick
    GISCIENCE & REMOTE SENSING, 2014, 51 (04) : 339 - 365
  • [30] Manhole Cover Classification Based on Super-Resolution Reconstruction of Unmanned Aerial Vehicle Aerial Imagery
    Wang, Dejiang
    Huang, Yuping
    APPLIED SCIENCES-BASEL, 2024, 14 (07):