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Forest Tree species Classification Based on Airborne Hyperspectral Imagery

机译:基于机载高光谱图像的森林树种类分类

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Forest precision classification products were the basic data for surveying of forest resource, updating forest subplot information, logging and design of forest. However, due to the diversity of stand structure, complexity of the forest growth environment, it's difficult to discriminate forest tree species using multi-spectral image. The airborne hyper-spectral images can achieve the high spatial and spectral resolution imagery of forest canopy, so it will good for tree species level classification. The aim of this paper was to test the effective of combining spatial and spectral features in airborne hyper-spectral image classification. The CASI hyper spectral image data were acquired from Liangshui natural reserves area. Firstly, we use the MNF (minimum noise fraction) transform method for to reduce the hyperspectral image dimensionality and highlighting variation. And secondly, we use the grey level co-occurrence matrix (GLCM) to extract the texture features of forest tree canopy from the hyper-spectral image, and thirdly we fused the texture and the spectral features of forest canopy to classify the trees species using support vector machine (SVM) with different kernel functions. The results showed that when using the SVM classifier, MNF and texture-based features combined with linear kernel function can achieve the best overall accuracy which was 85.92%. It was also confirm that combine the spatial and spectral information can improve the accuracy of tree species classification.
机译:森林精密分类产品是森林资源测量的基本数据,更新森林子图信息,伐木和设计林。然而,由于立体结构的多样性,森林生长环境的复杂性,难以使用多光谱图像区分森林树种。空气传播的超光谱图像可以实现森林冠层的高空间和光谱分辨率图像,因此它将适用于树种水平分类。本文的目的是测试空气传播超光谱图像分类中的空间和光谱特征的有效性。 CASI超谱图像数据从凉水自然储备区域获取。首先,我们使用MNF(最小噪声分数)变换方法来减少高光谱图像维度和突出显示变化。其次,我们使用灰度共同发生矩阵(GLCM)从超光谱图像中提取森林树冠的纹理特征,第三,我们融合了森林覆盖器的纹理和光谱特征来分类树种使用支持具有不同内核功能的向量机(SVM)。结果表明,当使用SVM分类器时,使用基于SVM分类器和基于纹理的特征,结合线性核功能,可以实现85.92%的最佳总体精度。它还证实,结合空间和光谱信息可以提高树种分类的准确性。

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