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Automatic land cover classification of geotagged images using ID3, Na?ve Bayes and Random Forest

机译:使用ID3,Na'Ve Bayes和随机森林自动覆盖地理覆盖图像的分类

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Land cover represents characteristics of earth surface. By utilizing the abundance of geotagged images from online crowdsource images like Geotagged photo library (http://eomf.ou.edu/photos) from the University of Oklahoma, prediction of land cover types will be established by using machine learning techniques. RGB Histogram, Edge Orientation and Vegetation Indices were used to obtain 8 features that representing images, therefore several classifiers were performed to observe which of classifiers produce best accuracy. Best classifier then used to predict unclassified images. The result, Random Forest classifier produces 82% in overall validation accuracy and 89% of 74 unclassified images was successfully predicted comparing with expert prediction result. The last, 74 of successful predicted images were mapped into Geographic Information System (GIS) to show land cover in GIS. This model was measured by using precision, recall, F-Test and Kappa Coefficient. The performance of each measurement reaches 89.8%, 88.1%, 88.6%, 85.6% respectively.
机译:陆地覆盖代表了地球表面的特点。通过利用来自在线人群资源图像的大量地理标记图像,如地理标记的照片库(http://eomf.ou.edu/photos)从俄克拉荷马大学,使用机器学习技术建立土地覆盖类型的预测。 RGB直方图,边缘方向和植被指数用于获得表示图像的8个特征,因此进行几个分类器以观察到哪个分类器产生最佳精度。然后最好的分类器用于预测未分类的图像。结果,随机森林分类器在整体验证精度中产生82 %,而89 %的74%的未分类图像与专家预测结果相比成功地预测。最后一个74个成功的预测图像被映射到地理信息系统(GIS)中以显示GIS中的陆地覆盖。通过使用精度,召回,F检验和Kappa系数来测量该模型。每个测量的性能达到89.8 %,88.1%,88.6 %,85.6 %。

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