Machine learning algorithms for mapping Prosopis glandulosa and land cover change using multi-temporal Landsat products: a case study of Prieska in the Northern Cape Province, South Africa

IF 0.3 Q4 REMOTE SENSING
C. D. Villiers, C. Munghemezulu, G. Chirima, Philemon Tsele, Zinhle Mashaba
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引用次数: 1

Abstract

Invasive alien plants (IAPs) are responsible for loss in biodiversity and the depletion of water resources in natural ecosystems. Prosopis species are IAPs previously introduced by farmers to provide shade and fodder for livestock. In the Northern Cape, Prosopis spp. invasions are associated with the loss of native species resulting in overgrazing and degrading rangelands. Mapping Prosopis glandulosa is essential for management initiatives to assist the government in minimising the spread and impact of IAPs. This study aims to evaluate the performance of two machine learning algorithms i.e., Support Vector Machine (SVM) and Random Forest (RF) to map the spatial dynamics of P. glandulosa in Prieska. The spatial invasion extent of P. glandulosa was mapped using multitemporal Landsat data spanning the period from 1990 to 2018. Validation of the results was done through an estimated error matrix with the use of the proportion of area and the estimates of overall accuracy, user’s accuracy and producer’s accuracy with a 95% confidence interval. The performance of the SVM and RF classifiers showed similar results in the overall accuracy and Kappa statistics throughout the years. These methods showed an overall increase of at least 3.3% of the area invaded by P. glandulosa from 1990 to 2018. The study indicates the importance of Landsat imagery for mapping historical and current land cover change of IAPs. The spread of P. glandulosa was confirmed by an increase in the total area of invasion, which enables decision-makers to improve monitoring and eradication initiatives.
使用多时相Landsat产品绘制Prosopis glandullosa和土地覆盖变化的机器学习算法:以南非北开普省Prieska为例
外来入侵植物是造成自然生态系统生物多样性丧失和水资源枯竭的原因。Prosopis物种是农民以前引入的IAP,为牲畜提供阴凉处和饲料。在北开普省,Prosopis spp.的入侵与当地物种的丧失有关,导致过度放牧和牧场退化。绘制腺性Prosopis glandulosa地图对于协助政府将IAP的传播和影响降至最低的管理举措至关重要。本研究旨在评估两种机器学习算法(即支持向量机(SVM)和随机森林(RF))在绘制普里斯卡格兰杜洛萨P.glandulosa空间动力学图方面的性能。利用1990年至2018年期间的多时相陆地卫星数据绘制了龟头蛙的空间入侵范围。通过使用面积比例和总体准确度、用户准确度和生产商准确度的估计误差矩阵对结果进行验证,置信区间为95%。多年来,SVM和RF分类器的性能在总体准确性和Kappa统计方面显示出相似的结果。这些方法显示,从1990年到2018年,腺虫入侵的面积总体增加了至少3.3%。该研究表明了陆地卫星图像对绘制IAP历史和当前土地覆盖变化图的重要性。侵袭总面积的增加证实了腺杜洛沙的传播,这使决策者能够改进监测和根除举措。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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