首页> 外文会议>Conference on Advanced Environmental Sensing Technology Ⅱ Oct 31-Nov 1, 2001, Newton, USA >Numerical methods for accelerating the PC A of large data sets applied to hyperspectral imaging
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Numerical methods for accelerating the PC A of large data sets applied to hyperspectral imaging

机译:加速应用于高光谱成像的大数据集PC A的数值方法

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摘要

Principal component analysis and regression (PCA, PCR) are widespread algorithms for the calibration of spectrometers and the evaluation of spectra. In many applications, however, there are huge amounts of calibration data, as it is common to hyperspectral imaging for instance. Such data sets consist often of several ten thousands of spectra measured at several hundred wavelength positions. Hence, a PCA of calibration sets that large is computational very time consuming - in particular the included singular value decomposition (SVD). Since this procedure takes several hours of computation time on conventional personal computers, its calculation is often not feasible. In this paper a straightforward acceleration of the PCA is presented, which is achieved by data preprocessing consisting of three steps: data compression based on a wavelet transformation, exclusion of redundant data, and by taking advantage of the matrix dimensions. Since the size of the calibration matrix determines the calculation time of the PCA, a reduction of its size enables the acceleration. Due to an appropriate data preprocessing, the PCA of the discussed examples could be accelerated by more than one order of magnitude. It is demonstrated by means of synthetically generated spectra as well as by experimental data that after preprocessing the PCA results in calibration models, which are comparable to the ones obtained by the conventional approach.
机译:主成分分析和回归(PCA,PCR)是用于光谱仪校准和光谱评估的广泛算法。然而,在许多应用中,存在大量的校准数据,例如高光谱成像中常见的校准数据。这样的数据集通常由在几百个波长位置测量的几万个光谱组成。因此,校准的PCA设置得很大,在计算上非常耗时-特别是所包含的奇异值分解(SVD)。由于此过程在常规个人计算机上需要花费数小时的计算时间,因此其计算通常不可行。在本文中,提出了PCA的直接加速,这是通过包括三个步骤的数据预处理实现的:基于小波变换的数据压缩,排除冗余数据以及利用矩阵维。由于校准矩阵的大小决定了PCA的计算时间,因此减小其大小就可以加速。由于适当的数据预处理,所讨论示例的PCA可以加速一个以上的数量级。通过合成生成的光谱以及实验数据证明,在PCA预处理之后,可以得到校准模型,该校准模型与通过常规方法获得的校准模型相当。

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