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A Method to Estimate the True Mahalanobis Distance from Eigenvectors of Sample Covariance Matrix

机译:从样本协方差矩阵特征向量估计真马氏距离的方法

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In statistical pattern recognition, the parameters of distributions are usually estimated from training sample vectors. However, estimated parameters contain estimation errors, and the errors cause bad influence on recognition performance when the sample size is not sufficient. Some methods can obtain better estimates of the eigenvalues of the true covariance matrix and can avoid bad influences caused by estimation errors of eigenvalues. However, estimation errors of eigenvectors of covariance matrix have not been considered enough. In this paper, we consider estimation errors of eigenvectors and show the errors can be regarded as estimation errors of eigenvalues. Then, we present a method to estimate the true Mahalanobis distance from eigenvectors of the sample covariance matrix. Recognition experiments show that by applying the proposed method, the true Mahalanobis distance can be estimated even if the sample size is small, and better recognition accuracy is achieved. The proposed method is useful for the practical applications of pattern recognition since the proposed method is effective without any hyper-parameters.
机译:在统计模式识别中,分布的参数通常是从训练样本向量中估计的。但是,估计参数包含估计误差,当样本量不足时,该误差会对识别性能产生不良影响。一些方法可以获得对真实协方差矩阵的特征值的更好估计,并且可以避免由特征值的估计误差引起的不利影响。然而,对协方差矩阵特征向量的估计误差还没有足够的考虑。在本文中,我们考虑了特征向量的估计误差,并表明该误差可被视为特征值的估计误差。然后,我们提出了一种从样本协方差矩阵的特征向量估计真实马氏距离的方法。识别实验表明,采用该方法,即使样本量很小,也能估计出真正的马氏距离,并能获得较好的识别精度。所提出的方法对于模式识别的实际应用是有用的,因为所提出的方法是有效的而没有任何超参数。

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