Eigenvalues of sample covariance matrices are often used in biometrics. It has been known for several decades that even though the sample covariance matrix is an unbiased estimate of the real covariance matrix [3], the eigenvalues of the sample covariance matrix are biased estimates of the real eigenvalues [6]. This bias is particularly dominant when the number of samples used for estimation is in the same order as the number of dimensions, as is often the case in biometrics. We investigate the effects of this bias on error rates in verification experiments and show that eigenvalue correction can improve recognition performance.
Principal component analysis is an important pattern recognition and dimensionality reduction tool i...
Abstract—Eigenvalue analysis is an important aspect in many data modeling methods. Unfortunately, th...
The quality of input samples is a crucial issue for both verification and identification biometric s...
Eigenvalues of sample covariance matrices are often used in biometrics. It has been known for severa...
Second-order statistics play an important role in data modeling. Nowadays, there is a tendency towar...
Verification decisions are often based on second order statistics estimated from a set of samples. O...
The trend in facial biometrics has been to use ever increasing image resolution, with the purpose of...
Eigenvalue analysis is an important aspect in many data modeling methods. Unfortunately, the eigenva...
Covariance matrix estimation plays an important role in statistical analysis in many fields, includi...
Many developers of biometric systems start with modest samples before general deployment. However, t...
Three methods for estimating the eigenvalues of the parameter covariance matrix in a Wishart distrib...
We investigate the effect of measurement error on principal component analysis in the high‐dimension...
Improved estimation of eigen vector of covariance matrix is considered under uncertain prior inform...
The distribution of genetic variance in multivariate phenotypes is characterized by the empirical sp...
In biometrics, often models are used in which the data distributions are approximated with normal di...
Principal component analysis is an important pattern recognition and dimensionality reduction tool i...
Abstract—Eigenvalue analysis is an important aspect in many data modeling methods. Unfortunately, th...
The quality of input samples is a crucial issue for both verification and identification biometric s...
Eigenvalues of sample covariance matrices are often used in biometrics. It has been known for severa...
Second-order statistics play an important role in data modeling. Nowadays, there is a tendency towar...
Verification decisions are often based on second order statistics estimated from a set of samples. O...
The trend in facial biometrics has been to use ever increasing image resolution, with the purpose of...
Eigenvalue analysis is an important aspect in many data modeling methods. Unfortunately, the eigenva...
Covariance matrix estimation plays an important role in statistical analysis in many fields, includi...
Many developers of biometric systems start with modest samples before general deployment. However, t...
Three methods for estimating the eigenvalues of the parameter covariance matrix in a Wishart distrib...
We investigate the effect of measurement error on principal component analysis in the high‐dimension...
Improved estimation of eigen vector of covariance matrix is considered under uncertain prior inform...
The distribution of genetic variance in multivariate phenotypes is characterized by the empirical sp...
In biometrics, often models are used in which the data distributions are approximated with normal di...
Principal component analysis is an important pattern recognition and dimensionality reduction tool i...
Abstract—Eigenvalue analysis is an important aspect in many data modeling methods. Unfortunately, th...
The quality of input samples is a crucial issue for both verification and identification biometric s...