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A wavelet-based PCA reduction for hyperspectral imagery

机译:基于小波的PCA归约用于高光谱图像

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Hyperspectral Imagery can provide very rich information on land cover classes. However, it also presents many challenges in data analysis and interpretation, due to the large amount of data collected. For example, conventional methods for land use and land cover classifications may not be applicable, due to "the curse of dimensionality." Therefore, these conventional methods may need a preprocessing step to transform high dimensional data to low dimensional data, by eliminating data redundancy. Due to its conceptual simplicity, principal component analysis (PCA) has been widely used for decades to reduce dimensionality. It is a useful technique if the spectral class structure of the transformed data is such that it is distributed along the first few axes. Otherwise, the transformed data may be similar to the original data. In such a case, the wavelet decomposition technique might be a better approach. Wavelet decomposition can reduce hyperspectral data in the spectral domain for each pixel. This will not only reduce the data volume, but will also preserve the distinction among spectral signatures that is useful for most pixel-based classifiers. This characteristic is related to the intrinsic property of wavelet transforms that preserve high- and low-frequency features during the signal decomposition, and therefore preserve peaks and valleys found in typical spectra. In general, most classification errors occur at the boundary between classes. Since wavelet decomposition is applied to each local pixel, a wavelet-based reduction might not well differentiate classes among neighborhood pixels in the spatial domain. PCA, however, can provide more local spatial information among neighborhood class pixels than wavelet.
机译:高光谱影像可以提供有关土地覆盖类别的非常丰富的信息。但是,由于收集的数据量很大,它在数据分析和解释方面也提出了许多挑战。例如,由于“维数的诅咒”,传统的土地利用方法和土地覆被分类方法可能不适用。因此,这些常规方法可能需要通过消除数据冗余来将高维数据转换为低维数据的预处理步骤。由于其概念上的简单性,主成分分析(PCA)已被广泛使用了数十年以减小尺寸。如果转换后的数据的光谱类结构沿前几个轴分布,则这是一种有用的技术。否则,转换后的数据可能类似于原始数据。在这种情况下,小波分解技术可能是更好的方法。小波分解可以减少每个像素在光谱域中的高光谱数据。这不仅会减少数据量,而且还会保留光谱签名之间的区别,这对于大多数基于像素的分类器而言非常有用。此特征与小波变换的固有属性有关,小波变换在信号分解过程中保留了高频和低频特征,因此保留了在典型频谱中发现的峰谷。通常,大多数分类错误发生在类之间的边界处。由于小波分解应用于每个局部像素,因此基于小波的归约可能无法很好地区分空间域中相邻像素之间的类别。但是,相比小波,PCA可以在邻域类像素之间提供更多的局部空间信息。

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