DocumentCode :
812066
Title :
A Hybrid Conditional Random Field for Estimating the Underlying Ground Surface From Airborne LiDAR Data
Author :
Lu, Wei-Lwun ; Murphy, Kevin P. ; Little, James J. ; Sheffer, Alla ; Fu, Hongbo
Author_Institution :
Dept. of Comput. Sci., Univ. of British Columbia, Vancouver, BC, Canada
Volume :
47
Issue :
8
fYear :
2009
Firstpage :
2913
Lastpage :
2922
Abstract :
Recent advances in airborne light detection and ranging (LiDAR) technology allow rapid and inexpensive generation of digital surface models (DSMs), 3-D point clouds of buildings, vegetations, cars, and natural terrain features over large regions. However, in many applications, such as flood modeling and landslide prediction, digital terrain models (DTMs), the topography of the bare-Earth surface, are needed. This paper introduces a novel machine learning approach to automatically extract DTMs from their corresponding DSMs. We first classify each point as being either ground or nonground, using supervised learning techniques applied to a variety of features. For the points which are classified as ground, we use the LiDAR measurements as an estimate of the surface height, but, for the nonground points, we have to interpolate between nearby values, which we do using a Gaussian random field. Since our model contains both discrete and continuous latent variables, and is a discriminative (rather than generative) probabilistic model, we call it a hybrid conditional random field. We show that a Maximum a Posteriori estimate of the surface height can be efficiently estimated by using a variant of the Expectation Maximization algorithm. Experiments demonstrate that the accuracy of this learning-based approach outperforms the previous best systems, based on manually tuned heuristics.
Keywords :
digital elevation models; expectation-maximisation algorithm; feature extraction; geophysical techniques; geophysics computing; image classification; image processing; learning (artificial intelligence); maximum likelihood estimation; optical radar; remote sensing by laser beam; 3D point clouds; DSMs; DTMs; Expectation Maximization algorithm; Gaussian random field; Maximum a Posteriori estimate; airborne LiDAR data; airborne light detection and ranging technology; bare-Earth surface topography; buildings; digital surface models; digital terrain models extraction; discriminative probabilistic model; flood modeling; hybrid conditional random field; landslide prediction; machine learning approach; supervised learning techniques; surface height; terrain features; vegetations; Conditional random fields (CRFs); digital terrain model (DTM); light detection and ranging (LiDAR) data filtering;
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2009.2017738
Filename :
4909008
Link To Document :
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