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Combining feature fusion and decision fusion for classification of hyperspectral and LiDAR data

机译:结合特征融合和决策融合对高光谱和LiDaR数据进行分类

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摘要

This paper proposes a method to combine feature fusion and decision fusion together for multi-sensor data classification. First, morphological features which contain elevation and spatial information, are generated on both LiDAR data and the first few principal components (PCs) of original hyperspectral (HS) image. We got the fused features by projecting the spectral (original HS image), spatial and elevation features onto a lower subspace through a graph-based feature fusion method. Then, we got four classification maps by using spectral features, spatial features, elevation features and the graph fused features individually as input of SVM classifier. The final classification map was obtained by fusing the four classification maps through the weighted majority voting. Experimental results on fusion of HS and LiDAR data from the 2013 IEEE GRSS Data Fusion Contest demonstrate effectiveness of the proposed method. Compared to the methods using single data source or only feature fusion, with the proposed method, overall classification accuracies were improved by 10% and 2%, respectively.
机译:提出了一种将特征融合与决策融合相结合的多传感器数据分类方法。首先,会在LiDAR数据和原始高光谱(HS)图像的前几个主要成分(PC)上生成包含海拔和空间信息的形态特征。通过基于图的特征融合方法将光谱(原始HS图像),空间和高程特征投影到较低的子空间,我们得到了融合特征。然后,通过分别使用光谱特征,空间特征,高程特征和图融合特征作为SVM分类器的输入,获得了四个分类图。最终分类图是通过加权多数投票将四个分类图融合而获得的。 2013年IEEE GRSS数据融合大赛有关HS和LiDAR数据融合的实验结果证明了该方法的有效性。与使用单一数据源或仅使用特征融合的方法相比,该方法将整体分类准确率分别提高了10%和2%。

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