Achtung: hohPublica wurde am 18.11.2024 aktualisiert. Falls Sie auf Darstellungsfehler stoßen, löschen Sie bitte Ihren Browser-Cache (Strg + Umschalt + Entf). *** Attention: hohPublica was last updated on November 18, 2024. If you encounter display errors, please delete your browser cache (Ctrl + Shift + Del).
 

A new version of this entry is available:

Loading...
Thumbnail Image
Article
2022

Remote sensing of maize plant height at different growth stages using UAV-based digital surface models (DSM)

Abstract (English)

Plant height of maize is related to lodging resistance and yield and is highly heritable but also polygenic, and thus is an important trait in maize breeding. Various manual methods exist to determine the plant height of maize, yet they are labor-intensive and time consuming. Therefore, we established digital surface models (DSM) based on RGB-images captured by an unmanned aerial vehicle (UAV) at five different dates throughout the growth period to rapidly estimate plant height of 400 maize genotypes. The UAV-based estimation of plant height (PHUAV) was compared to the manual measurement from the ground to the highest leaf (PHL), to the tip of the manually straightened highest leaf (PHS) and, on the final date, to the top of the tassel (PHT). The best results were obtained for estimating both PHL (0.44 ≤ R2 ≤ 0.51) and PHS (0.50 ≤ R2 ≤ 0.61) from 39 to 68 days after sowing (DAS). After calibration the mean absolute percentage error (MAPE) between PHUAV and PHS was in a range from 12.07% to 19.62%. It is recommended to apply UAV-based maize height estimation from 0.2 m average plant height to maturity before the plants start to senesce and change the leaf color.

File is subject to an embargo until

This is a correction to:

A correction to this entry is available:

This is a new version of:

Notes

Publication license

Publication series

Published in

Agronomy, 12 (2022), 4, 958. https://doi.org/10.3390/agronomy12040958. ISSN: 2073-4395
Faculty
Institute

Examination date

Supervisor

Edition / version

Citation

DOI

ISSN

ISBN

Language
English

Publisher

Publisher place

Classification (DDC)
630 Agriculture

Original object

Standardized keywords (GND)

Sustainable Development Goals

BibTeX

@article{Oehme2022, url = {https://hohpublica.uni-hohenheim.de/handle/123456789/16799}, doi = {10.3390/agronomy12040958}, author = {Oehme, Leon Hinrich and Reineke, Alice-Jacqueline and Weiß, Thea Mi et al.}, title = {Remote Sensing of Maize Plant Height at Different Growth Stages Using UAV-Based Digital Surface Models (DSM)}, journal = {Agronomy}, year = {2022}, volume = {12}, number = {4}, }
Share this publication