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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing. >Regression Approaches to Small Sample Inverse Covariance Matrix Estimation for Hyperspectral Image Classification
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Regression Approaches to Small Sample Inverse Covariance Matrix Estimation for Hyperspectral Image Classification

机译:小样本逆协方差矩阵估计的高光谱图像分类回归方法

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摘要

A key component in most parametric classifiers is the estimation of an inverse covariance matrix. In hyperspectral images, the number of bands can be in the hundreds, leading to covariance matrices having tens of thousands of elements. Lately, the use of linear regression in estimating the inverse covariance matrix has been introduced in the time-series literature. This paper adopts and expands these ideas to ill-posed hyperspectral image classification problems. The results indicate that at least some of the approaches can give a lower classification error than traditional methods such as the linear discriminant analysis and the regularized discriminant analysis. Furthermore, the results show that, contrary to earlier beliefs, estimating long-range dependencies between bands appears necessary to build an effective hyperspectral classifier and that the high correlations between neighboring bands seem to allow differing sparsity configurations of the inverse covariance matrix to obtain similar classification results.
机译:大多数参数分类器中的关键组成部分是逆协方差矩阵的估计。在高光谱图像中,带的数量可以是数百个,从而导致具有成千上万个元素的协方差矩阵。最近,在时间序列文献中已经引入了使用线性回归估计逆协方差矩阵的方法。本文采用这些思想并将其扩展到不适定的高光谱图像分类问题。结果表明,至少某些方法比线性判别分析和正则判别分析等传统方法具有更低的分类错误。此外,结果表明,与早期的信念相反,估计频带之间的远距离依存关系似乎是建立有效的高光谱分类器所必需的,并且相邻频带之间的高度相关性似乎允许逆协方差矩阵的稀疏性配置不同以获得相似的分类。结果。

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