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首页> 外文期刊>Remote sensing in earth systems sciences >Integrating Sentinel-2 Derivatives to Map Land Use/Land Cover in an Avocado Agro-Ecological System in Kenya
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Integrating Sentinel-2 Derivatives to Map Land Use/Land Cover in an Avocado Agro-Ecological System in Kenya

机译:整合 Sentinel-2 衍生物以绘制肯尼亚鳄梨农业生态系统中的土地利用/土地覆盖图

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摘要

Abstract Reliable, readily available, and appropriate land use/land cover (LULC) information is fundamental for coherent land and natural resources management, especially in data-scarce environments that are complex and heterogeneous. This study took a holistic approach for evaluating the classification accuracy of LULC classes in an avocado production system in Kenya using different classification scenarios and the random forest (RF) machine learning (ML) algorithm in Google Earth Engine (GEE). We integrated sentinel-2 (S2) spectral bands, vegetation indices (VIs), and phenological variables in two classification routines, pixel- and polygon-based procedures, and assessed their performance and importance in mapping LULC classes. To assess the LULC classification accuracy, a confusion matrix and a pattern-based assessment were used. This study demonstrated that the polygon-based classification procedure was the best (overall accuracy > 75 for confusion matrix and > 0.7 for pattern-based accuracy assessment methods) in mapping out complex landscapes when compared to the pixel-based classification procedures. Combining S2 reflectance with vegetation indices, red-edge (RE) vegetation indices, and phenological metrics can considerably improve LULC classification accuracy.
机译:摘要 可靠、易得和适当的土地利用/土地覆盖(LULC)信息是连贯的土地和自然资源管理的基础,特别是在复杂和异构的数据稀缺环境中。本研究采用整体方法,使用不同的分类场景和谷歌地球引擎(GEE)中的随机森林(RF)机器学习(ML)算法,评估肯尼亚鳄梨生产系统中LULC类别的分类准确性。我们将哨兵-2 (S2) 光谱波段、植被指数 (VI) 和物候变量整合到基于像素和多边形的两种分类程序中,并评估了它们在绘制 LULC 类别中的性能和重要性。为了评估LULC分类的准确性,使用了混淆矩阵和基于模式的评估。本研究表明,与基于像素的分类程序相比,基于多边形的分类程序在绘制复杂景观方面是最好的(混淆矩>阵的总体准确率为75%,基于模式的精度评估方法的总体准确率为0.7>0.7)。将 S2 反射率与植被指数、红边 (RE) 植被指数和物候指标相结合,可以显著提高 LULC 分类精度。

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