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Multispectral Image Classification Using Independent Component Analysis and Data Dimensionality Expansion Approaches

机译:基于独立分量分析和数据维数扩展方法的多光谱图像分类

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In this paper we investigate the application of independent component analysis (ICA) to multispectral image classification. In particular, the performance of Joint Approximate Diagonalization of Eigenmatrices (JADE) algorithm is studied. ICA is particularly useful for classifying objects with unknown spectral signatures in an unknown image scene, i.e., unsupervised classification, because it does not require any prior information about class signatures. Since the weight matrix in ICA is a square matrix for the purpose of mathematical tractability, the number of objects that can be classified is equal to the data dimensionality, i.e., the number of spectral bands. When the number of spectral bands is very small (e.g., 3-band CIR photograph), it is impossible to classify all the different objects present in an image scene with the original data. In order to solve this problem, we present a data dimensionality expansion technique to generate artificial bands for additional spectral measurements. The results from such a nonlinear band generation approach are compared with a linear band generation method using cubic spline interpolation of pixel spectral signatures. The experiments demonstrate that such a nonlinear band generation approach can expand the applicability of ICA and improve the classification accuracy.
机译:在本文中,我们研究了独立分量分析(ICA)在多光谱图像分类中的应用。特别地,研究了特征矩阵联合近似对角化(JADE)算法的性能。 ICA对于在未知图像场景中对具有未知光谱特征的对象进行分类(即无监督分类)特别有用,因为它不需要任何有关分类特征的先验信息。由于出于数学易处理性的目的,ICA中的权重矩阵是方矩阵,因此可以分类的对象的数量等于数据维数,即,光谱带的数量。当光谱带的数量非常小时(例如3波段CIR照片),不可能用原始数据对图像场景中存在的所有不同对象进行分类。为了解决此问题,我们提出了一种数据维数扩展技术,以生成用于附加频谱测量的人工频带。将这种非线性谱带生成方法的结果与使用像素光谱特征的三次样条插值的线性谱带生成方法进行比较。实验表明,这种非线性谱带生成方法可以扩展ICA的适用范围,提高分类精度。

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