首页> 外文会议>6th European conference on colour in graphics, imaging, and vision (CGIV 2012) >Representing Outliers for Improved Multi-Spectral Data Reduction
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Representing Outliers for Improved Multi-Spectral Data Reduction

机译:代表离群值以改善多光谱数据缩减

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摘要

Large multi-spectral datasets such as those created by multi-spectral images require a lot of data storage. Compression of these data is therefore an important problem. A common approach is to use principal components analysis (PCA) as a way of reducing the data requirements as part of a lossy compression strategy. In this paper, we employ the fast MCD (Minimum Covariance Determinant) algorithm, as a highly robust estimator of multivariate mean and covariance, to detect outlier spectra in a multi-spectral image. We then show that by removing the outliers from the main dataset, the performance of PCA in spectral compression significantly increases. However, since outlier spectra are a part of the image, they cannot simply be ignored. Our strategy is to cluster the outliers into a small number of groups and then compress each group separately using its own cluster-specific PCA-derived bases. Overall, we show that significantly better compression can be achieved with this approach.
机译:大型的多光谱数据集(例如由多光谱图像创建的数据集)需要大量数据存储。因此,这些数据的压缩是一个重要的问题。一种常见的方法是使用主成分分析(PCA)作为减少数据需求的一种方法,这是有损压缩策略的一部分。在本文中,我们采用快速MCD(最小协方差决定因素)算法作为多元均值和协方差的高度鲁棒估计器,以检测多光谱图像中的离群光谱。然后,我们表明通过从主数据集中删除异常值,PCA在频谱压缩中的性能将显着提高。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。我们的策略是将离群值聚类为少量的组,然后使用其自己的特定于聚类的PCA衍生基数分别压缩每个组。总的来说,我们表明使用这种方法可以实现明显更好的压缩。

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