Land classification from LiDAR full-waveforms based on multi-class support vector machines

Xiaolu Li, Lian Ma, Lijun Xu
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引用次数: 1

Abstract

In this study, a multi-class support vector machines (SVM) based land classification method is presented to predict the land types of Beijing area. The returned full-waveforms were collected from the Ice, Cloud and land Elevation Satellite (ICESat) mission and the Full Width at Half Maximum (FWHM) of the full-waveforms were used to be the attributes of test data for generating the SVM prediction model. FWHM were obtained from waveforms filtered by Empirical Mode Decomposition (EMD). The SVM prediction model with high cross validation accuracy was selected to predict the land types of Beijing area. GLAS full-waveforms, which were used to predict and validate the land classification, were acquired when ICESat was passing over Beijing urban and rural areas from 1st Jan 2003 to 31st Dec 2005. Besides of terrace and building, the main land types of Beijing area are plain and stone Mountain that lacks of trees. Thus the received waveforms of ICESat/GLAS were divided into five kinds, `invalid', `plain', `terrace', `building' and `mountain' waveforms. Over this test site, the algorithm achieved an overall classification accuracy of 91.5%. This method can be developed to be an on-line automation algorithm to classify the land type.
基于多类支持向量机的激光雷达全波形土地分类
本文提出了一种基于多类支持向量机(SVM)的土地分类方法来预测北京地区的土地类型。从冰云和陆高程卫星(ICESat)任务中收集返回的全波形,将全波形的半最大全宽(Full Width at Half Maximum, FWHM)作为测试数据的属性,生成SVM预测模型。FWHM是由经验模态分解(EMD)滤波后的波形得到的。选择交叉验证精度较高的SVM预测模型对北京地区土地类型进行预测。利用2003年1月1日至2005年12月31日ICESat卫星在北京城市和农村上空的观测数据获取GLAS全波形,用于土地分类的预测和验证。除了梯田和建筑外,北京地区主要的土地类型是平原和缺乏树木的石山。因此,将ICESat/GLAS接收波形分为“无效”、“平原”、“阶地”、“建筑物”和“山地”五种波形。在该试验点上,该算法的总体分类准确率达到91.5%。该方法可发展成为一种在线的土地类型自动分类算法。
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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