Evaluation of Random Forest and Adaboost tree-based ensemble classification and spectral band selection for ecotope mapping using airborne hyperspectral imagery

被引:738
作者
Chan, Jonathan Cheung-Wai [1 ]
Paelinckx, Desire [2 ]
机构
[1] Vrije Univ Brussel, Dept Geog, B-1050 Brussels, Belgium
[2] Res Inst Nat & Forest INBO, B-1070 Brussels, Belgium
关键词
ecotope mapping; ensemble classification; Adaboost random forest; airborne hyperspectral; band selection;
D O I
10.1016/j.rse.2008.02.011
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Detailed land use/land cover classification at ecotope level is important for environmental evaluation. In this study, we investigate the possibility of using airborne hyperspectral imagery for the classification of ecotopes. In particular, we assess two tree-based ensemble classification algorithms: Adaboost and Random Forest, based on standard classification accuracy, training time and classification stability. Our results show that Adaboost and Random Forest attain almost the same overall accuracy (close to 70%) with less than 1% difference, and both outperform a neural network classifier (63.7%). Random Forest, however, is faster in training and more stable. Both ensemble classifiers are considered effective in dealing with hyperspectral data. Furthermore, two feature selection methods, the out-of-bag strategy and a wrapper approach feature subset selection using the best-first search method are applied. A majority of bands chosen by both methods concentrate between 1.4 and 1.8 mu m at the early shortwave infrared region. Our band subset analyses also include the 22 optimal bands between 0.4 and 2.5 mu m suggested in Thenkabail et al. [Thenkabail, RS., Enclona, E.A., Ashton, M.S., and Van Der Meer, B. (2004). Accuracy assessments of hyperspectral waveband performance for vegetation analysis applications. Remote Sensing of Environment, 91, 354-376.] due to similarity of the target classes. All of the three band subsets considered in this study work well with both classifiers as in most cases the overall accuracy dropped only by less than 1%. A subset of 53 bands is created by combining all feature subsets and comparing to using the entire set the overall accuracy is the same with Adaboost, and with Random Forest, a 0.2% improvement. The strategy to use a basket of band selection methods works better. Ecotopes belonging to the tree classes are in general classified better than the grass classes. Small adaptations of the classification scheme are recommended to improve the applicability of remote sensing method for detailed ecotope mapping. (C) 2008 Elsevier Inc. All rights reserved.
引用
收藏
页码:2999 / 3011
页数:13
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