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Forest Classification Based on GF-5 Hyperspectral Remote Sensing Data in Northeast China

机译:基于GF-5高光谱遥感数据的森林分类

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Hyperspectral remote sensing is a multi-dimensional information acquisition technology that combines imaging technology and spectral technology. It can obtain continuous and narrow band image data with high spectral resolution. Therefore, hyperspectral remote sensing has great potential in the identification of ground features and the classification of vegetation types. In this paper, GF-5 data was used as training data to classify forest types in Northeast China. Firstly, the water absorption bands and some noise bands were removed from the GF-5 hyperspectral image. Furthermore, the bands were grouped according to their correlation, and principal component analysis (PCA) was performed on each group of bands. According to the band index, the bands with better quality were extracted from each group and combined with the bands obtained by PCA to reduce the dimension of hyperspectral data. Then the Convolutional Neural Network (CNN) was used to extract the features of the processed image, and the extracted features were input into the support vector machine (SVM) classifier to obtain the forest vegetation type. By combining CNN and SVM. a hyperspectral forest classification model based on CNN-SVM fusion is constructed. The experimental results show that the method proposed in this paper performs best in forest type classification accuracy. The overall classification accuracy can reach 88.67%, and the Kappa coefficient can reach 0.84.
机译:高光谱遥感是一种多维信息采集技术,其结合了成像技术和光谱技术。它可以获得具有高光谱分辨率的连续和窄带图像数据。因此,高光谱遥感在识别地面特征和植被类型的分类方面具有很大的潜力。在本文中,GF-5数据被用作培训数据,以对东北地区进行分类林类型。首先,从GF-5高光谱图像中除去吸水带和一些噪声带。此外,条带根据其相关进行分组,并且在每组带上进行主成分分析(PCA)。根据频带索引,从每个组中提取具有更好质量的频带,并与PCA获得的频段组合以减少高光谱数据的维度。然后使用卷积神经网络(CNN)来提取处理图像的特征,并将提取的特征输入到支撑载体机(SVM)分类器中以获得森林植被类型。通过组合CNN和SVM。构建了基于CNN-SVM融合的高光谱森林分类模型。实验结果表明,本文提出的方法在森林类型分类准确性中表现最佳。整体分类准确度可达到88.67%,而Kappa系数可以达到0.84。

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