Title :
The Sparse Matrix Transform for Covariance Estimation and Analysis of High Dimensional Signals
Author :
Cao, Guangzhi ; Bachega, Leonardo R. ; Bouman, Charles A.
Author_Institution :
GE Healthcare, Waukesha, WI, USA
fDate :
3/1/2011 12:00:00 AM
Abstract :
Covariance estimation for high dimensional signals is a classically difficult problem in statistical signal analysis and machine learning. In this paper, we propose a maximum likelihood (ML) approach to covariance estimation, which employs a novel non-linear sparsity constraint. More specifically, the covariance is constrained to have an eigen decomposition which can be represented as a sparse matrix transform (SMT). The SMT is formed by a product of pairwise coordinate rotations known as Givens rotations. Using this framework, the covariance can be efficiently estimated using greedy optimization of the log-likelihood function, and the number of Givens rotations can be efficiently computed using a cross-validation procedure. The resulting estimator is generally positive definite and well-conditioned, even when the sample size is limited. Experiments on a combination of simulated data, standard hyperspectral data, and face image sets show that the SMT-based covariance estimates are consistently more accurate than both traditional shrinkage estimates and recently proposed graphical lasso estimates for a variety of different classes and sample sizes. An important property of the new covariance estimate is that it naturally yields a fast implementation of the estimated eigen-transformation using the SMT representation. In fact, the SMT can be viewed as a generalization of the classical fast Fourier transform (FFT) in that it uses “butterflies” to represent an orthonormal transform. However, unlike the FFT, the SMT can be used for fast eigen-signal analysis of general non-stationary signals.
Keywords :
covariance matrices; fast Fourier transforms; maximum likelihood estimation; signal processing; sparse matrices; Givens rotations; covariance estimation; eigen decomposition; eigen-transformation; face image sets; fast Fourier transform; graphical lasso estimates; greedy optimization; high dimensional signal analysis; log-likelihood function; maximum likelihood approach; nonlinear sparsity constraint; nonstationary signal analysis; orthonormal transform; pairwise coordinate rotations; shrinkage estimates; simulated data; sparse matrix transform; standard hyperspectral data; Algorithm design and analysis; Covariance matrix; Data models; Eigenvalues and eigenfunctions; Maximum likelihood estimation; Transforms; Covariance estimation; eigen-image analysis; hyperspectral data; maximum likelihood estimation; sparse matrix transform; Algorithms; Biometric Identification; Databases, Factual; Face; Fourier Analysis; Humans; Image Processing, Computer-Assisted; Nonlinear Dynamics; Reproducibility of Results; Signal Processing, Computer-Assisted;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2010.2071390