AIRBORNE LIDAR DATA CLASSIFICATION IN COMPLEX URBAN AREA USING RANDOM FOREST: A CASE STUDY OF BERGAMA, TURKEY

IF 3.1 Q2 ENGINEERING, GEOLOGICAL International Journal of Engineering and Geosciences Pub Date : 2019-02-01 DOI:10.26833/ijeg.440828
Sibel Canaz Sevgen
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引用次数: 22

Abstract

Airborne Light Detection and Ranging (LiDAR) data have been increasingly used for classification of urban areas in the last decades. Classification of urban areas is especially crucial to separate the area into classes for urban planning, mapping, and change detection monitoring purposes. In this study, an airborne LiDAR data of a complex urban area from Bergama District, Izmir, Turkey were classified in four classes; buildings, trees, asphalt road, and ground. Random Forest (RF) supervised classification method is selected as classification algorithm, and pixel wise classification was performed. Ground truth of the area was generated by digitizing classes into features to select training data and to validate the results.  The selected study area from Bergama district is complex in urban planning of buildings, road, and ground. The building are embedded and very close to each other, while trees are very close to buildings and sometimes cover the rooftops of buildings. The most challenge part of this study is to generate ground truth in such a complex area. According to obtained classification results, overall accuracy of the results is found as %70,20. The experimental results showed that the algorithm promises reliable results to classify airborne LiDAR data into classes in a complex urban area.
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基于随机森林的复杂城区机载激光雷达数据分类&以土耳其贝加马为例
在过去的几十年里,机载光探测和测距(LiDAR)数据越来越多地用于城市区域的分类。城市区域的分类对于将该区域划分为用于城市规划、地图绘制和变化检测监测目的的类别尤为重要。在这项研究中,土耳其伊兹密尔Bergama区一个复杂城市区域的机载激光雷达数据被分为四类;建筑物、树木、柏油路和地面。选择随机森林(RF)监督分类方法作为分类算法,并进行逐像素分类。该区域的地面实况是通过将类数字化为特征来生成的,以选择训练数据并验证结果。Bergama区选定的研究区域在建筑、道路和地面的城市规划方面很复杂。建筑是嵌入式的,彼此非常靠近,而树木离建筑物非常近,有时会覆盖建筑物的屋顶。这项研究最具挑战性的部分是在这样一个复杂的领域产生地面实况。根据所获得的分类结果,结果的总体准确度为%70,20。实验结果表明,该算法有望在复杂的城市地区对机载激光雷达数据进行分类。
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来源期刊
CiteScore
4.00
自引率
0.00%
发文量
12
审稿时长
30 weeks
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