Title :
Hyperspectral Image Classification With Limited Labeled Training Samples Using Enhanced Ensemble Learning and Conditional Random Fields
Author :
Fan Li ; Linlin Xu ; Siva, Parthipan ; Wong, Alexander ; Clausi, David A.
Author_Institution :
Dept. of Syst. Design Eng., Univ. of Waterloo, Waterloo, ON, Canada
Abstract :
Classification of hyperspectral imagery using few labeled samples is a challenging problem, considering the high dimensionality of hyperspectral imagery. Classifiers trained on limited samples with abundant spectral bands tend to overfit, leading to weak generalization capability. To address this problem, we have developed an enhanced ensemble method called multiclass boosted rotation forest (MBRF), which combines the rotation forest algorithm and a multiclass AdaBoost algorithm. The benefit of this combination can be explained by bias-variance analysis, especially in the situation of inadequate training samples and high dimensionality. Furthermore, MBRF innately produces posterior probabilities inherited from AdaBoost, which are served as the unary potentials of the conditional random field (CRF) model to incorporate spatial context information. Experimental results show that the classification accuracy by MBRF as well as its integration with CRF consistently outperforms the other referenced state-of-the-art classification methods when limited labeled samples are available for training.
Keywords :
hyperspectral imaging; image classification; learning (artificial intelligence); statistical analysis; CRF model; MBRF method; bias-variance analysis; conditional random fields; enhanced ensemble learning; generalization capability; hyperspectral image classification; multiclass AdaBoost algorithm; multiclass boosted rotation forest; rotation forest algorithm; spatial context information; spectral bands; Bagging; Boosting; Hyperspectral imaging; Radio frequency; Training; AdaBoost; conditional random fields (CRFs); hyperspectral data classification; rotation forests (RoF);
Journal_Title :
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
DOI :
10.1109/JSTARS.2015.2414816