Title :
Random Subspace Ensembles for Hyperspectral Image Classification With Extended Morphological Attribute Profiles
Author :
Junshi Xia ; Dalla Mura, Mauro ; Chanussot, Jocelyn ; Peijun Du ; Xiyan He
Author_Institution :
Key Lab. for Satellite Mapping Technol. & Applic., National Adm. of Surveying, Mapping & Geoinf. of China, China
Abstract :
Classification is one of the most important techniques to the analysis of hyperspectral remote sensing images. Nonetheless, there are many challenging problems arising in this task. Two common issues are the curse of dimensionality and the spatial information modeling. In this paper, we present a new general framework to train series of effective classifiers with spatial information for classifying hyperspectral data. The proposed framework is based on the two key observations: 1) the curse of dimensionality and the high feature-to-instance ratio can be alleviated by using random subspace (RS) ensembles; and 2) the spatial-contextual information is modeled by the extended multiattribute profiles (EMAPs). Two fast learning algorithms, i.e., decision tree (DT) and extreme learning machine (ELM), are selected as the base classifiers. Six RS ensemble methods, namely, RS with DT, random forest (RF), rotation forest, rotation RF (RoRF), RS with ELM (RSELM), and rotation subspace with ELM (RoELM), are constructed by the multiple base learners. Experimental results on both simulated and real hyperspectral data verify the effectiveness of the RS ensemble methods for the classification of both spectral and spatial information (EMAPs). On the University of Pavia Reflective Optics Spectrographic Imaging System image, our proposed approaches, i.e., both RSELM and RoELM with EMAPs, achieve the state-of-the-art performances, which demonstrates the advantage of the proposed methods. The key parameters in RS ensembles and the computational complexity are also investigated in this paper.
Keywords :
decision trees; geophysical image processing; hyperspectral imaging; image classification; remote sensing; classifier; decision tree; dimensionality modelling; extended morphological attribute profile; extreme learning machine; fast learning algorithm; high feature-to-instance ratio; hyperspectral data classification; hyperspectral image classification; hyperspectral remote sensing images; multiple base learner; random subspace ensemble method; reflective optics spectrographic imaging system image; rotation random forest; spatial information modeling; spatial-contextual information; Feature extraction; Hyperspectral imaging; Prediction algorithms; Radio frequency; Training; Classification; extended multiattribute profiles (EMAPs); hyperspectral data; random subspace (RS);
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2015.2409195