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Polarimetric SAR Image Classification Using Multifeatures Combination and Extremely Randomized Clustering Forests

机译:基于多特征组合和极端随机聚类森林的极化SAR图像分类

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Terrain classification using polarimetric SAR imagery has been a very active research field over recent years. Although lots of features have been proposed and many classifiers have been employed, there are few works on comparing these features and their combination with different classifiers. In this paper, we firstly evaluate and compare different features for classifying polarimetric SAR imagery. Then, we propose two strategies for feature combination: manual selection according to heuristic rules and automatic combination based on a simple but efficient criterion. Finally, we introduce extremely randomized clustering forests (ERCFs) to polarimetric SAR image classification and compare it with other competitive classifiers. Experiments on ALOS PALSAR image validate the effectiveness of the feature combination strategies and also show that ERCFs achieves competitive performance with other widely used classifiers while costing much less training and testing time.
机译:近年来,使用极化SAR图像进行地形分类一直是非常活跃的研究领域。尽管已经提出了许多特征并且已经使用了许多分类器,但是很少有关于比较这些特征及其与不同分类器的组合的工作。在本文中,我们首先评估和比较用于分类极化SAR影像的不同特征。然后,我们提出了两种特征组合策略:根据启发式规则进行手动选择和基于简单但有效的准则进行自动组合。最后,我们将极随机聚类森林(ERCF)引入极化SAR图像分类中,并将其与其他竞争性分类器进行比较。在ALOS PALSAR图像上进行的实验验证了特征组合策略的有效性,并且还表明ERCF与其他广泛使用的分类器相比具有竞争优势,而所需的训练和测试时间却少得多。

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