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A Machine Learning-Based Classification System for Urban Built-Up Areas Using Multiple Classifiers and Data Sources

机译:使用多个分类器和数据源的城市建筑区域基于机器学习的分类系统

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摘要

Information about urban built-up areas is important for urban planning and management. However, obtaining accurate information about urban built-up areas is a challenge. This study developed a general-purpose built-up area intelligent classification (BAIC) system that supports various types of data and classifiers. All of the steps in the BAIC were implemented using Python modules including Numpy, Pandas, matplotlib, and scikit-learn. We used the BAIC to conduct a classification experiment that involved seven types of input data; namely, Point of Interest (POI), Road Network (RN), nighttime light (NTL), a combination of POI and RN data (POI_RN), a combination of POI and NTL data (POI_NTL), a combination of RN and NTL data (RN_NTL), and a combination of POI, RN, and NTL data (POI_RN_NTL), and five classifiers, namely, Logistic Regression (LR), Decision Tree (DT), Random Forests (RF), Gradient Boosted Decision Trees (GBDT), and AdaBoost. The results show the following: (1) among the 35 combinations of the five classifiers and seven types of input data, the overall accuracy (OA) ranged from 76 to 89%, F1 values ranged from 0.73 to 0.86, and the area under the receiver operating characteristic (ROC) curve (AUC) ranged from 0.83 to 0.95. The largest F1 value and OA were obtained using the POI_RN_NTL data and AdaBoost, while the largest AUC was obtained using POI_RN_NTL and POI_NTL data against AdaBoost, LR, and RF; and (2) the advantages of the BAIC include its support for multi-source input data, its objective accuracy assessment, and its robust classifiers. The BAIC can quickly and efficiently realize the automatic classification of urban built-up areas at a reasonably low cost and can be readily applied to other urban areas in the world where any kind of POI, RN, or NTL data coverage is available. The results of this study are expected to provide timely and effective reference information for urban planning and urban management departments, and could also potentially be used to develop large-scale maps of urban built-up areas in the future.
机译:对城市建成区的信息是城市规划和管理的重要。然而,获得关于城市建成区的准确信息是一个挑战。本研究开发了一种通用的建成区智能分类(BAIC)系统,支持各种类型的数据和分类的。所有在北汽的步骤,使用Python模块,包括numpy的,熊猫,matplotlib实施,scikit学习。我们使用了北汽进行分类实验,涉及七种类型的输入数据;即,兴趣点(POI),道路网络(RN),夜间光(NTL),POI和RN数据(POI_RN)的组合,POI和NTL数据(POI_NTL)的组合,RN和NTL数据的组合(RN_NTL)和POI,RN,和NTL数据(POI_RN_NTL),和五个分类器,即,逻辑回归(LR),决策树(DT),随机森林(RF),梯度推动下决策树(GBDT)的组合和AdaBoost的。结果显示如下:(1)五个分类器的35分的组合和七种类型的输入数据中,总体准确度(OA)介于76至89%,F1的值从0.73范围至0.86,而根据该区域接受者操作特征(ROC)曲线(AUC)的范围为0.83〜0.95。使用POI_RN_NTL数据和AdaBoost算法得到最大F1值和OA,而使用针对AdaBoost算法,LR,和RF POI_RN_NTL和POI_NTL数据而获得的最大的AUC;和(2)BAIC的优点包括其用于多源的输入数据,它的目标精度评价,其鲁棒的分类器的支持。北汽能够快速有效地实现城市建成区自动分类以合理的低成本和可容易地应用到其他城市地区在世界上任何种类的POI,RN或NTL数据覆盖的是可用的。这项研究的结果有望为城市规划和城市管理部门及时有效的参考信息,并也可能被用来开发在未来城市建成区大比例尺地图。

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