National Observatory of Athens, IAASARS, BEYOND Centre of EO Research and Satellite Remote Sensing, Athens, Greece.
Laboratory of Remote Sensing, National Technical University of Athens, Athens, Greece.
PLoS One. 2023 Mar 8;18(3):e0282364. doi: 10.1371/journal.pone.0282364. eCollection 2023.
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.
作物物候学是作物估产和农业管理的关键信息。传统上,物候学是从地面观测得到的;然而,地球观测、天气和土壤数据已被用于捕捉作物的生理生长。在这项工作中,我们提出了一种新的方法,用于在田间水平上进行棉花的季节内物候估计。为此,我们利用了各种地球观测植被指数(来自 Sentinel-2)和大气及土壤参数的数值模拟。我们的方法是无监督的,以解决地面真实数据稀疏和稀缺的普遍问题,这使得大多数监督替代方案在实际场景中不切实际。我们应用模糊 c-均值聚类来识别棉花的主要物候阶段,然后使用聚类成员权重进一步预测相邻阶段之间的过渡阶段。为了评估我们的模型,我们在希腊奥赫摩诺收集了 1285 个作物生长地面观测数据。我们引入了一种新的收集协议,分配多达两个物候标签,代表田间的主要和次要生长阶段,从而指示阶段何时发生转变。我们的模型与一个基线模型进行了比较,该模型允许隔离随机一致性并评估其真正的能力。结果表明,我们的模型大大优于基线模型,考虑到该方法的无监督性质,这是很有希望的。我们彻底讨论了局限性和相关的未来工作。地面观测数据以可直接使用的数据集格式呈现,并将在发布后在 https://github.com/Agri-Hub/cotton-phenology-dataset 上提供。