首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >A FIT-FOR-PURPOSE ALGORITHM FOR ENVIRONMENTAL MONITORING BASED ON MAXIMUM LIKELIHOOD, SUPPORT VECTOR MACHINE AND RANDOM FOREST
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A FIT-FOR-PURPOSE ALGORITHM FOR ENVIRONMENTAL MONITORING BASED ON MAXIMUM LIKELIHOOD, SUPPORT VECTOR MACHINE AND RANDOM FOREST

机译:基于最大相似度,支持向量机和随机森林的适合环境监测的自适应算法

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Due to concerns of recent earth climate changes such as an increase of earth surface temperature and monitoring its effect on earth surface, environmental monitoring is a necessity. Environmental change monitoring in earth sciences needs land use land cover change (LULCC) modelling as a key factor to investigate impact of climate change phenomena such as droughts and floods on earth surface land cover. There are several free and commercial multi/hyper spectral data sources of Earth Observation (EO) satellites including Landsat, Sentinel and Spot. In this paper, for land use land cover modelling (LULCM), image classification of Landsat 8 using several mathematical and machine learning algorithms including Support Vector Machine (SVM), Random Forest (RF), Maximum Likelihood (ML) and a combination of SVM, ML and RF as a fit-for-purpose algorithm are implemented in R programming language and compared in terms of overall accuracy for image classification.
机译:由于担心最近的地球气候变化,例如地球表面温度的升高并监测其对地球表面的影响,因此必须进行环境监测。地球科学中的环境变化监测需要土地利用土地覆被变化(LULCC)建模,这是研究干旱和洪水等气候变化现象对地表土地覆被影响的关键因素。地球观测(EO)卫星有几种免费和商业的多/超光谱数据源,包括Landsat,Sentinel和Spot。在本文中,对于土地使用的土地覆盖建模(LULCM),使用几种数学和机器学习算法对Landsat 8进行图像分类,包括支持向量机(SVM),随机森林(RF),最大似然(ML)和SVM的组合,ML和RF作为适合的算法以R编程语言实现,并在图像分类的整体准确性方面进行了比较。

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