Analyzing Winter Wheat (Triticum aestivum) Growth Pattern Using High Spatial Resolution Images: A Case Study at Lakehead Agriculture Research Station, Thunder Bay, Canada

Crops Pub Date : 2024-03-28 DOI:10.3390/crops4020009
María V. Brenes Fuentes, Muditha K. Heenkenda, T. S. Sahota, Laura Segura Serrano
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Abstract

Remote sensing technology currently facilitates the monitoring of crop development, enabling detailed analysis and monitoring throughout the crop’s growing stages. This research analyzed the winter wheat growth dynamics of experimental plots at the Lakehead University Agricultural Research Station, Thunder Bay, Canada using high spatial and temporal resolution remote sensing images. The spectral signatures for five growing stages were prepared. NIR reflectance increased during the growing stages and decreased at the senescence, indicating healthy vegetation. The space–time cube provided valuable insight into how canopy height changed over time. The effect of nitrogen treatments on wheat did not directly influence the plant count (spring/autumn), and height and volume at maturity. However, the green and dry weights were different at several treatments. Winter wheat yield was predicted using the XGBoost algorithm, and moderate results were obtained. The study explored different techniques for analyzing winter wheat growth dynamics and identified their usefulness in smart agriculture.
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利用高空间分辨率图像分析冬小麦(Triticum aestivum)的生长模式:加拿大桑德湾湖头农业研究站案例研究
目前,遥感技术为监测作物生长提供了便利,可以对作物的整个生长阶段进行详细分析和监测。这项研究利用高空间和时间分辨率遥感图像分析了加拿大桑德湾湖首大学农业研究站实验地块的冬小麦生长动态。绘制了五个生长阶段的光谱特征。近红外反射率在生长期增加,在衰老期减少,表明植被健康。时空立方体为了解冠层高度随时间的变化提供了宝贵的信息。氮处理对小麦的影响并不直接影响植株数(春/秋)以及成熟时的高度和体积。但是,在几个处理中,绿重和干重有所不同。使用 XGBoost 算法对冬小麦产量进行了预测,结果适中。该研究探索了分析冬小麦生长动态的不同技术,并确定了这些技术在智能农业中的实用性。
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