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A metaheuristic feature-level fusion strategy in classification of urban area using hyperspectral imagery and LiDAR data

机译:利用高光谱图像和LiDAR数据进行城市分类的元启发式特征级融合策略

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ABSTRACT One of the most sophisticated recent data fusions in remote sensing has involved the use of LiDAR and hyperspectral data. Feature-level fusion strategy is applied based on extraction of several recent proposed spectral and structural features from hyperspectral and LiDAR data, respectively. In order to optimize classification performance, feature selection and determination of classifier parameters are carried out simultaneously. Referring to complexity of search space, cuckoo search as a powerful metaheuristic optimization algorithm is applied. Experiments show that the proposed method can improve the overall classification accuracy up to 6% with respect to only hyperspectral imagery. The obtained results show the classification improvement for the tree, residential and commercial classes is about 4%, 21% and 35%, respectively.
机译:摘要遥感中最复杂的数据融合方法之一是使用LiDAR和高光谱数据。基于分别从高光谱和LiDAR数据中提取的几个最近提出的光谱和结构特征,应用了特征级融合策略。为了优化分类性能,同时进行特征选择和分类器参数的确定。关于搜索空间的复杂性,杜鹃搜索作为一种强大的元启发式优化算法得到了应用。实验表明,相对于高光谱图像,该方法可以将整体分类准确率提高多达6%。获得的结果表明,树木,住宅和商业类别的分类改进分别约为4%,21%和35%。

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