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支持向量机的建筑物激光脚点提取方法
引用本文:罗伊萍,姜挺,王鑫,陈文锋,张锐.支持向量机的建筑物激光脚点提取方法[J].测绘科学,2011,36(4):173-175.
作者姓名:罗伊萍  姜挺  王鑫  陈文锋  张锐
作者单位:1. 信息工程大学测绘学院,郑州450052;61081部队,北京100094
2. 信息工程大学测绘学院,郑州,450052
3. 73603部队,南京,210049
摘    要:本文提出了一种基于全色波段航空影像和激光雷达数据的建筑物检测方法.如何从激光点云数据中提取出建筑物激光脚点,是建筑物三维重建和轮廓提取的难点问题之一.植被密集区域以及与建筑物紧密相邻的树木的激光点很难与建筑物激光点区分开.本文利用支持向量机对单个激光点的特征进行两分类,特征向量包括激光点的高程、高程变化信息以及与激光点...

关 键 词:激光雷达  支持向量机  建筑物检测  点态分类  影像特征

Support vector machine classification for detecting laser points of building
LUO Yi-ping,JIANG Ting,WANG Xin,CHEN Wen-feng,ZHANG Rui.Support vector machine classification for detecting laser points of building[J].Science of Surveying and Mapping,2011,36(4):173-175.
Authors:LUO Yi-ping  JIANG Ting  WANG Xin  CHEN Wen-feng  ZHANG Rui
Institution:①(①Institute of Surveying and Mapping,Information Engineering University,Zhengzhou 450052,China;②Troops 61081,Beijing 100094,China;③Troops 73603,Nanjing 210049,China)
Abstract:A building detection method based on aerial image with panchromatic bands and airborne laser scanning data was presented in the paper.Detecting building footprints from laser points cloud data is one of the most difficult problems in building modeling and edge detection.Tree data points in mountainous area or connecting to building points are usually too confused to know from building points.A binary classification was done to distinguish building points from tree points.It used the support vector machine to the features of single laser point,including height,height variation information and spectrum information from LiDAR point cloud and registered aerial image.The experiments showed that the pointwise classification based on support vector machine could efficiently detect the building points from LiDAR data,and the spectrum information would improve the accuracy of classification.
Keywords:LiDAR  support vector machine  building detection  pointwise classification  image feature
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