Feature Extraction Based on Difference Vectors

T. Jeong, J. G. Park, Chulhee Lee
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引用次数: 2

Abstract

In a typical classification procedure of high dimensional data, feature extraction is first applied to reduce the dimensionality and a classifier is employed. However, in most feature extraction methods, covariance matrices must be estimated. When training samples are limited, this estimation is inherently biased, thereby generating ineffective features. In this paper, we propose a new feature extraction method for high dimensional hyperspectral data when limited training samples are available. In the proposed method, we construct a feature matrix using available training samples. The proposed method calculates the difference vector feature matrix using weighted difference vectors among the training samples. Experimental results show that the proposed method improves classification accuracy even if the size of training sample is very small.
基于差分向量的特征提取
在典型的高维数据分类过程中,首先使用特征提取来降维,然后使用分类器。然而,在大多数特征提取方法中,必须估计协方差矩阵。当训练样本有限时,这种估计固有地有偏差,从而产生无效的特征。本文提出了一种在训练样本有限的情况下高维高光谱数据特征提取的新方法。在该方法中,我们使用可用的训练样本构造特征矩阵。该方法利用训练样本间的加权差分向量计算差分向量特征矩阵。实验结果表明,即使训练样本的大小很小,该方法也能提高分类精度。
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