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

机译:基于机载高光谱影像的生态林制图对基于随机森林和Adaboost树的集成分类和谱带选择的评估

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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.
机译:在生态区一级详细的土地使用/土地覆盖分类对于环境评估很重要。在这项研究中,我们调查了使用机载高光谱图像对生态环境进行分类的可能性。特别是,我们基于标准分类准确性,训练时间和分类稳定性,评估了两种基于树的集成分类算法:Adaboost和随机森林。我们的结果表明,Adaboost和随机森林的总体准确度几乎相同(接近70%),相差不到1%,两者均优于神经网络分类器(63.7%)。但是,Random Forest的训练速度更快且更稳定。两个集成分类器均被认为在处理高光谱数据方面有效。此外,应用了两种特征选择方法,即袋外策略和使用最佳优先搜索方法的包装方法特征子集选择。两种方法选择的大多数频带集中在早期的短波红外区域的1.4至1.8μm之间。我们的能带子集分析还包括了那么的在0.4和2.5微米之间的22条最佳能带,这在特恩卡拜尔等人提出。 [RS,Thenkabail,E.A。Enclona,M.S。Ashton和B. Van Der Meer,(2004年)。用于植被分析应用的高光谱波段性能的准确性评估。环境遥感,91,354-376。],因为目标类别的相似性。本研究中考虑的所有三个波段子集均适用于两个分类器,因为在大多数情况下,整体准确性仅下降了不到1%。通过组合所有特征子集并与使用整个集合进行比较,创建了53个波段的子集,总体精度与Adaboost相同,与Random Forest相比,提高了0.2%。使用一篮子频带选择方法的策略效果更好。属于树木类别的生态环境通常比草地类别具有更好的分类。建议对分类方案进行少量修改,以提高遥感方法在详细生态位图上的适用性。 (C)2008 Elsevier Inc.保留所有权利。

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