LIU Zhi-qing, LI Peng-cheng, CHEN Xiao-wei etc. Classification of airborne LiDAR point cloud data based on information vector machine[J]. Editorial Office of Optics and Precision Engineering, 2016,24(1): 210-219
LIU Zhi-qing, LI Peng-cheng, CHEN Xiao-wei etc. Classification of airborne LiDAR point cloud data based on information vector machine[J]. Editorial Office of Optics and Precision Engineering, 2016,24(1): 210-219 DOI: 10.3788/OPE.20162401.0210.
Classification of airborne LiDAR point cloud data based on information vector machine
When Support Vector Machines(SVMs) are applied in airborne LiDAR point data classification
their performance is limited by weak model sparseness
the prediction lack of probabilistic sense
and long training time. Therefore
a novel LiDAR point could data classification method was proposed based on an Informative Vector Machine (IVM). Firstly
the assumed density filtering was utilized to produce an approximation for probit classification noise model
and the classification problem was transformed into the regression problem. Then
the informative vectors of the active set in LiDAR point cloud data were chosen to achieve the model sparseness according to the largest posteriori differential entropy. Finally
in the training process
the kernel parameter was obtained by Marginal Likelihood Maximisation(MLM) and an One Against Rest (OAR) classifier was selected to realize multi-class classification. The LiDAR point cloud data from Niagara and Africa were selected for experiments in comparison with the SVM
and experimental results show that the classification accuracy of the method based on IVM increases to 94.20% and 90.78% respectively
the number of basis vectors reduce to 50 and 90 separately
and the training time decreases to 5.86 s and 8.03 s respectively. In conclusion
the classification method based on IVM has advantages in fast training speeds
strong model sparseness and high classification accuracy.
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references
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