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Assessing the Potential of Sentinel-2 and Pléiades Data for the Detection of Prosopis and Vachellia spp. in Kenya

机译:评估Sentinel-2和Pléiades数据用于检测Prosopis和Vachellia spp的潜力。在肯尼亚

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摘要

Prosopis was introduced to Baringo, Kenya in the early 1980s for provision of fuelwood and for controlling desertification through the Fuelwood Afforestation Extension Project (FAEP). Since then, Prosopis has hybridized and spread throughout the region. Prosopis has negative ecological impacts on biodiversity and socio-economic effects on livelihoods. Vachellia tortilis, on the other hand, is the dominant indigenous tree species in Baringo and is an important natural resource, mostly preferred for wood, fodder and charcoal production. High utilization due to anthropogenic pressure is affecting the Vachellia populations, whereas the well adapted Prosopis—competing for nutrients and water—has the potential to replace the native Vachellia vegetation. It is vital that both species are mapped in detail to inform stakeholders and for designing management strategies for controlling the Prosopis invasion. For the Baringo area, few remote sensing studies have been carried out. We propose a detailed and robust object-based Random Forest (RF) classification on high spatial resolution Sentinel-2 (ten meter) and Pléiades (two meter) data to detect Prosopis and Vachellia spp. for Marigat sub-county, Baringo, Kenya. In situ reference data were collected to train a RF classifier. Classification results were validated by comparing the outputs to independent reference data of test sites from the “Woody Weeds” project and the Out-Of-Bag (OOB) confusion matrix generated in RF. Our results indicate that both datasets are suitable for object-based Prosopis and Vachellia classification. Higher accuracies were obtained by using the higher spatial resolution Pléiades data (OOB accuracy 0.83 and independent reference accuracy 0.87–0.91) compared to the Sentinel-2 data (OOB accuracy 0.79 and independent reference accuracy 0.80–0.96). We conclude that it is possible to separate Prosopis and Vachellia with good accuracy using the Random Forest classifier. Given the cost of Pléiades, the free of charge Sentinel-2 data provide a viable alternative as the increased spectral resolution compensates for the lack of spatial resolution. With global revisit times of five days from next year onwards, Sentinel-2 based classifications can probably be further improved by using temporal information in addition to the spectral signatures.
机译:Prosopis于1980年代初被引入肯尼亚的Baringo,以提供薪材并通过薪材造林推广项目(FAEP)控制荒漠化。从那时起,Prosopis便在整个地区杂交并传播。 Prosopis对生物多样性有不利的生态影响,对生计有社会经济影响。另一方面,Vachellia tortilis是Baringo的主要土著树种,并且是重要的自然资源,主要用于木材,饲料和木炭生产。人为压力导致的高利用率正影响着Vachellia种群,而适应性强的Prosopis(争夺养分和水分)则有可能取代Vachellia原生植被。至关重要的是,对两个物种进行详细的制图,以向利益相关者提供信息,并为控制Prosopis入侵设计管理策略。对于Baringo地区,很少进行遥感研究。我们提出了基于高空间分辨率Sentinel-2(十米)和Pléiades(两米)数据的详细且健壮的基于对象的随机森林(RF)分类,以检测Prosopis和Vachellia spp。肯尼亚巴林哥的Marigat县。收集了现场参考数据以训练RF分类器。通过将输出结果与“ Woody Weeds”项目的测试站点的独立参考数据以及RF中生成的袋外(OOB)混淆矩阵进行比较,来验证分类结果。我们的结果表明,这两个数据集都适用于基于对象的Prosopis和Vachellia分类。与Sentinel-2数据(OOB准确度0.79和独立参考准确度0.80-0.96)相比,使用更高的空间分辨率Pléiades数据(OOB准确度0.83和独立参考准确度0.87-0.91)可以获得更高的精度。我们得出的结论是,使用随机森林分类器可以很好地分离Prosopis和Vachellia。考虑到of的代价,免费的Sentinel-2数据提供了一种可行的选择,因为提高的光谱分辨率可以弥补空间分辨率的不足。从明年开始,全球重访时间为五天,除光谱特征外,还可以通过使用时间信息来进一步改进基于Sentinel-2的分类。

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