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Benefits of textural characterization for the classification of hyperspectral images

机译:对高光谱图像分类的造影特性的好处

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Several spatial features are compared for the spatial/spectral classification of hyperspectral data. These features are extracted from texture spectra, co-occurrence matrices and morphological profiles. First, a PCA (Principal Components Analysis) is carried out on the hyperspectral image and textural features are computed on the first principal components. These textural features are concatenated together with spectral features (the principal components previously used) and the resulting image vector is then classified using SVM (Support Vector Machines) and a gaussian mixture algorithm. In the latter case, a hierarchical classification is used as a post-processing in order to reach a desired number of classes.
机译:比较几种空间特征,以比较高光谱数据的空间/光谱分类。这些特征是从纹理光谱,共发生矩阵和形态轮廓中提取的。首先,在高光谱图像上执行PCA(主成分分析),并且在第一主组件上计算纹理特征。这些纹理特征与光谱特征(先前使用的主成分)一起连接,然后使用SVM(支持向量机)和高斯混合算法对所得到的图像向量进行分类。在后一种情况下,将分层分类用作后处理,以达到所需的类。

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