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The Utility of AISA Eagle Hyperspectral Data and Random Forest Classifier for Flower Mapping

机译:AISA Eagle高光谱数据和随机森林分类器在花卉制图中的应用

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Knowledge of the floral cycle and the spatial distribution and abundance of flowering plants is important for bee health studies to understand the relationship between landscape and bee hive productivity and honey flow. The key objective of this study was to show how AISA Eagle hyperspectral data and random forest (RF) can be optimally utilized to produce flowering and spatially explicit land use/land cover (LULC) maps for a study site in Kenya. AISA Eagle imagery was captured at the early flowering period (January 2014) and at the peak flowering season (February 2013). Data on white and yellow flowering trees as well as LULC classes in the study area were collected and used as ground-truth points. We utilized all 64 AISA Eagle bands and also used variable importance in RF to identify the most important bands in both AISA Eagle data sets. The results showed that flowering was most accurately mapped using the AISA Eagle data from the peak flowering period (85.71%–88.15% overall accuracy for the peak flowering season imagery versus 80.82%–83.67% for the early flowering season). The variable optimization (i.e., variable selection) analysis showed that less than half of the AISA bands (n = 26 for the February 2013 data and n = 21 for the January 2014 data) were important to attain relatively reliable classification accuracies. Our study is an important first step towards the development of operational flower mapping routines and for understanding the relationship between flowering and bees’ foraging behavior.
机译:了解蜜蜂的花期和空间分布以及开花植物的丰富度对于蜜蜂健康研究至关重要,以了解景观与蜜蜂蜂巢生产力和蜂蜜流动之间的关系。这项研究的主要目的是展示如何最佳地利用AISA Eagle的高光谱数据和随机森林(RF)来为肯尼亚的一个研究地点制作开花和空间明晰的土地利用/土地覆盖(LULC)地图。在开花初期(2014年1月)和开花高峰期(2013年2月)捕获了AISA Eagle影像。收集研究区域内白色和黄色开花树木的数据以及LULC类别,并将其用作地面真点。我们利用了所有64个AISA Eagle频段,并在RF中使用了可变重要性来识别两个AISA Eagle数据集中最重要的频段。结果表明,使用峰值开花期的AISA Eagle数据可以最准确地绘制开花情况(峰值开花季节影像的总体准确度为85.71%–88.15%,而早期开花季节的整体准确性为80.82%–83.67%)。变量优化(即变量选择)分析表明,只有不到一半的AISA频段(2013年2月数据为n = 26,2014年1月数据为n = 21)对于获得相对可靠的分类精度很重要。我们的研究是开发可操作的花朵作图程序以及了解开花与蜜蜂觅食行为之间关系的重要的第一步。

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