Fuzzy clustering for the within-season estimation of cotton phenology
- URL: http://arxiv.org/abs/2211.14099v2
- Date: Tue, 29 Nov 2022 09:53:51 GMT
- Title: Fuzzy clustering for the within-season estimation of cotton phenology
- Authors: Vasileios Sitokonstantinou, Alkiviadis Koukos, Ilias Tsoumas, Nikolaos
S. Bartsotas, Charalampos Kontoes, Vassilia Karathanassi
- Abstract summary: We propose a new approach for the within-season phenology estimation for cotton at the field level.
Our method is unsupervised to address the ever-present problem of sparse and scarce ground truth data.
In order to evaluate our models, we collected 1,285 crop growth ground observations in Orchomenos, Greece.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Crop phenology is crucial information for crop yield estimation and
agricultural management. Traditionally, phenology has been observed from the
ground; however Earth observation, weather and soil data have been used to
capture the physiological growth of crops. In this work, we propose a new
approach for the within-season phenology estimation for cotton at the field
level. For this, we exploit a variety of Earth observation vegetation indices
(derived from Sentinel-2) and numerical simulations of atmospheric and soil
parameters. Our method is unsupervised to address the ever-present problem of
sparse and scarce ground truth data that makes most supervised alternatives
impractical in real-world scenarios. We applied fuzzy c-means clustering to
identify the principal phenological stages of cotton and then used the cluster
membership weights to further predict the transitional phases between adjacent
stages. In order to evaluate our models, we collected 1,285 crop growth ground
observations in Orchomenos, Greece. We introduced a new collection protocol,
assigning up to two phenology labels that represent the primary and secondary
growth stage in the field and thus indicate when stages are transitioning. Our
model was tested against a baseline model that allowed to isolate the random
agreement and evaluate its true competence. The results showed that our model
considerably outperforms the baseline one, which is promising considering the
unsupervised nature of the approach. The limitations and the relevant future
work are thoroughly discussed. The ground observations are formatted in an
ready-to-use dataset and will be available at
https://github.com/Agri-Hub/cotton-phenology-dataset upon publication.
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