TY - JOUR
T1 - Closing the Phenotyping Gap: High Resolution UAV Time Series for Soybean Growth Analysis Provides Objective Data from Field Trials
AU - Borra-Serrano, Irene
AU - Swaef, Tom De
AU - Quataert, Paul
AU - Aper, Jonas
AU - Saleem, Aamir
AU - Saeys, Wouter
AU - Somers, Ben
AU - Roldán-Ruiz, Isabel
AU - Lootens, Peter
PY - 2020/5/20
Y1 - 2020/5/20
N2 - Close remote sensing approaches can be used for high throughput on-field phenotyping in the context of plant breeding and biological research. Data on canopy cover (CC) and canopy height (CH) and their temporal changes throughout the growing season can yield information about crop growth and performance. In the present study, sigmoid models were fitted to multi-temporal CC and CH data obtained using RGB imagery captured with a drone for a broad set of soybean genotypes. The Gompertz and Beta functions were used to fit CC and CH data, respectively. Overall, 90.4% fits for CC and 99.4% fits for CH reached an adjusted R2 > 0.70, demonstrating good performance of the models chosen. Using these growth curves, parameters including maximum absolute growth rate, early vigor, maximum height, and senescence were calculated for a collection of soybean genotypes. This information was also used to estimate seed yield and maturity (R8 stage) (adjusted R2 = 0.51 and 0.82). Combinations of parameter values were tested to identify genotypes with interesting traits. An integrative approach of fitting a curve to a multi-temporal dataset resulted in biologically interpretable parameters that were informative for relevant traits.
AB - Close remote sensing approaches can be used for high throughput on-field phenotyping in the context of plant breeding and biological research. Data on canopy cover (CC) and canopy height (CH) and their temporal changes throughout the growing season can yield information about crop growth and performance. In the present study, sigmoid models were fitted to multi-temporal CC and CH data obtained using RGB imagery captured with a drone for a broad set of soybean genotypes. The Gompertz and Beta functions were used to fit CC and CH data, respectively. Overall, 90.4% fits for CC and 99.4% fits for CH reached an adjusted R2 > 0.70, demonstrating good performance of the models chosen. Using these growth curves, parameters including maximum absolute growth rate, early vigor, maximum height, and senescence were calculated for a collection of soybean genotypes. This information was also used to estimate seed yield and maturity (R8 stage) (adjusted R2 = 0.51 and 0.82). Combinations of parameter values were tested to identify genotypes with interesting traits. An integrative approach of fitting a curve to a multi-temporal dataset resulted in biologically interpretable parameters that were informative for relevant traits.
KW - <i>Glycine max</i>
KW - RGB
KW - canopy cover
KW - canopy height
KW - close remote sensing
KW - curve fitting
KW - growth model
UR - https://www.mdpi.com/721690
U2 - 10.3390/RS12101644
DO - 10.3390/RS12101644
M3 - A1: Web of Science-article
VL - 12
SP - 1644
JO - Remote Sensing 2020, Vol. 12, Page 1644
JF - Remote Sensing 2020, Vol. 12, Page 1644
IS - 10
ER -