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Detecting winter canola (Brassica napus) phenological stages using an improved shape-model method based on time-series UAV spectral data

Chao Zhang, Ziang Xie, Jiali Shang, Jiangui Liu, Taifeng Dong, Min Tang, Shaoyuan Feng, Huanjie Cai

2022The Crop Journal29 citationsDOIOpen Access PDF

Abstract

Accurate information about phenological stages is essential for canola field management practices such as irrigation, fertilization, and harvesting. Previous studies in canola phenology monitoring focused mainly on the flowering stage, using its apparent structure features and colors. Additional phenological stages have been largely overlooked. The objective of this study was to improve a shape-model method (SMM) for extracting winter canola phenological stages from time-series top-of-canopy reflectance images collected by an unmanned aerial vehicle (UAV). The transformation equation of the SMM was refined to account for the multi-peak features of the temporal dynamics of three vegetation indices (VIs) (NDVI, EVI, and CIred-edge). An experiment with various seeding scenarios was conducted, including four different seeding dates and three seeding densities. Three mathematical functions: asymmetric Gaussian function (AGF), Fourier function, and double logistic function, were employed to fit time-series vegetation indices to extract information about phenological stages. The refined SMM effectively estimated the phenological stages of canola, with a minimum root mean square error (RMSE) of 3.7 days for all phenological stages. The AGF function provided the best fitting performance, as it captured multiple peaks in the growth dynamics characteristics for all seeding date scenarios using four scaling parameters. For the three selected VIs, CIred-edge achieved the greatest accuracy in estimating the phenological stage dates. This study demonstrates the high potential of the refined SMM for estimating winter canola phenology.

Topics & Concepts

PhenologyCanolaMean squared errorMathematicsSeedingEnvironmental scienceCanopyRemote sensingStatisticsAgronomyEcologyGeographyBiologyRemote Sensing in AgricultureRemote Sensing and LiDAR ApplicationsLand Use and Ecosystem Services
Detecting winter canola (Brassica napus) phenological stages using an improved shape-model method based on time-series UAV spectral data | Litcius