利用高空间分辨率遥感图像估算甘蔗成熟度

Crops Pub Date : 2024-07-11 DOI:10.3390/crops4030024
Esteban Rodriguez Leandro, Muditha K. Heenkenda, Kerin F. Romero
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引用次数: 0

摘要

干旱和洪水的频率和严重程度增加,对甘蔗的生长条件产生了不利影响。气候变化对种植产生了影响,多年来甘蔗的生长动态也发生了变化。要降低甘蔗的脆弱性,就必须识别甘蔗的生长阶段。传统方法在检测这些变化时效率低下,尤其是在估算甘蔗成熟度时--成熟度是甘蔗生产的关键步骤。因此,本研究旨在利用高空间分辨率遥感数据,开发一种成本低、时间短的甘蔗成熟度估算方法。使用无人机获取图像。采集田间样本,并在实验室测量其糖度和极值。选择归一化差异水分指数、绿色归一化差异植被指数和绿色波段(与田间样本的相关性最高)进行进一步分析。使用随机森林(RF)、支持向量机(SVM)和多线性回归模型,利用 brix 和 pol 变量预测甘蔗成熟度。RF 模型的性能最佳。因此,根据 RF 模型的结果计算了研究区域的成熟度指数。结果发现,田间地块尚未达到可收割的成熟度。所开发的方法既经济又省时,可对作物进行时间监测,并优化收割时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating Sugarcane Maturity Using High Spatial Resolution Remote Sensing Images
Sugarcane suffers from the increased frequency and severity of droughts and floods, negatively affecting growing conditions. Climate change has affected cultivation, and the growth dynamics have changed over the years. The identification of the development stages of sugarcane is necessary to reduce its vulnerability. Traditional methods are inefficient when detecting those changes, especially when estimating sugarcane maturity—a critical step in sugarcane production. Hence, the study aimed to develop a cost- and time-effective method to estimate sugarcane maturity using high spatial-resolution remote sensing data. Images were acquired using a drone. Field samples were collected and measured in the laboratory for brix and pol values. Normalized Difference Water Index, Green Normalized Difference Vegetation Index and green band were chosen (highest correlation with field samples) for further analysis. Random forest (RF), Support Vector Machine (SVM), and multi-linear regression models were used to predict sugarcane maturity using the brix and pol variables. The best performance was obtained from the RF model. Hence, the maturity index of the study area was calculated based on the RF model results. It was found that the field plot has not yet reached maturity for harvesting. The developed cost- and time-effective method allows temporal crop monitoring and optimizes the harvest time.
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