Building extraction by fusion of LIDAR data and aerial images

Jianhua Mao, Xuefeng Liu, Qihong Zeng
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引用次数: 8

Abstract

It is well know that geometric filters for points cloud can only go so far when removing above-ground phenomena for it's difficult to determine whether a laser point has hit a special object when only spatial analysis is included. And comparing to the discrete points cloud, the high quality, large-coverage images provided by aerial cameras is a very important advantage of photogrammetry, which can be a very important complement data source to the points cloud. And by a process of spectral imagery LIDAR composite, points cloud can be fused with accurate spectral images provided by aerial CCD cameras on the same board. And the points cloud, with both high quality of reflection and geometric properties, can be filtered by integrating the reflectivity and geometric method. In this paper, the measurement characteristics and advantages of reflectivity of laser scanning and CCD cameras for the classification of return points are analyzed, and a building extraction method, integrating the geometric feature and reflectivity information of the return's intensity and the spectral range of CCD camera are presented. In which, the vegetation points are filtered by spectral attributes initially, and then points belonged to the building walls are segmented by a area attributes after constructing the return points' voronoi diagram; and building surface points are filtered by plane-fitting clustering method.
激光雷达数据与航空影像融合的建筑物提取
众所周知,点云的几何滤波器在去除地面现象时只能做到这一点,因为如果只考虑空间分析,很难确定激光点是否击中了一个特殊的物体。与离散点云相比,航空相机提供的高质量、大覆盖图像是摄影测量的一个非常重要的优势,可以作为点云的一个非常重要的补充数据源。通过光谱图像激光雷达合成过程,将点云与同一板上的航空CCD相机提供的精确光谱图像融合。利用反射率和几何特性相结合的方法对具有高反射质量和几何特性的点云进行滤波。本文分析了激光扫描相机和CCD相机反射率的测量特点和优点,并提出了一种结合回波强度和CCD相机光谱范围的几何特征和反射率信息的建筑物提取方法。其中,首先对植被点进行光谱属性滤波,构建回归点voronoi图后,对属于建筑墙体的点进行面积属性分割;采用平面拟合聚类方法对建筑表面点进行过滤。
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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