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Outlier modeling for spectral data reduction

机译:离群建模以减少光谱数据

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摘要

The spectra in spectral reflectance datasets tend to be quite correlated and therefore they can be represented more compactly using standard techniques such as principal components analysis (PCA) as part of a lossy compression strategy. However, the presence of outlier spectra can often increase the overall error of the reconstructed spectra. This paper introduces a new outlier modeling (OM) method that detects, clusters, and separately models outliers with their own set of basis vectors. Outliers are defined in terms of the robust Mahalanobis distance using the fast minimum covariance determinant algorithm as a robust estimator of the multivariate mean and covariance from which it is computed. After removing the outliers from the main dataset, the performance of PCA on the remaining data improves significantly; however, since outlier spectra are a part of the image, they cannot simply be ignored. The solution is to cluster the outliers into a small number of clusters and then model each cluster separately using its own cluster-specific PCA-derived bases. Tests show that OM leads to lower spectral reconstruction errors of reflectance spectra in terms of both normalized RMS and goodness of fit.
机译:光谱反射率数据集中的光谱趋于完全相关,因此可以使用标准技术(例如主成分分析(PCA))作为有损压缩策略的一部分来更紧凑地表示光谱。但是,异常光谱的存在通常会增加重建光谱的整体误差。本文介绍了一种新的离群值建模(OM)方法,该方法可以检测,聚类并使用其自己的基础矢量集对离群值进行单独建模。使用快速最小协方差行列式算法作为多元均值和协方差的稳健估计量,使用鲁棒马氏距离来定义离群值。从主数据集中删除异常值后,PCA在其余数据上的性能将大大提高;但是,由于离群光谱是图像的一部分,因此不能简单地忽略它们。解决方案是将异常值聚类为少量的聚类,然后使用其自身特定于聚类的PCA衍生的基础分别对每个聚类建模。测试表明,就归一化RMS和拟合优度而言,OM导致较低的反射光谱光谱重建误差。

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