Random forests of binary hierarchical classifiers for analysis of hyperspectral data

M. Crawford, Jisoo Ham, Yangchi Chen, Joydeep Ghosh
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引用次数: 28

Abstract

Statistical classification of hyperspectral data is challenging because the input space is high in dimension and correlated, but labeled information to characterize the class distributions is typically sparse. The resulting classifiers are often unstable and have poor generalization. A new approach that is based on the concept of random forests of classifiers and implemented within a multiclassifier system arranged as a binary hierarchy is proposed. The primary goal is to achieve improved generalization of the classifier in analysis of hyperspectral data, particularly when the quantity of training data is limited. The new classifier incorporates bagging of training samples and adaptive random subspace feature selection with the binary hierarchical classifier (BHC), such that the number of features that is selected at each node of the tree is dependent on the quantity of associated training data. Classification results from experiments on data acquired by the Hyperion sensor on the NASA EO-1 satellite over the Okavango Delta of Botswana are superior to those from our original best basis BHC algorithm, a random subspace extension of the BHC, and a random forest implementation using the CART classifier.
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用于高光谱数据分析的二元分层分类器随机森林
高光谱数据的统计分类具有挑战性,因为输入空间是高维且相关的,但用于表征类分布的标记信息通常是稀疏的。得到的分类器通常不稳定,泛化能力差。基于分类器随机森林的概念,提出了一种新的分类器分类方法。主要目标是在高光谱数据分析中实现分类器的改进泛化,特别是在训练数据数量有限的情况下。该分类器将训练样本的装袋和自适应随机子空间特征选择与二元层次分类器(BHC)相结合,使得在树的每个节点上选择的特征数量取决于相关训练数据的数量。利用NASA EO-1卫星上的Hyperion传感器在博茨瓦纳奥卡万戈三角洲采集的数据进行的分类实验结果优于我们最初的最佳基BHC算法、BHC的随机子空间扩展算法和使用CART分类器实现的随机森林算法。
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