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稀疏矩阵变换在高维信号协方差估计和分析中的应用。

The sparse matrix transform for covariance estimation and analysis of high dimensional signals.

机构信息

School of Electrical and Computer Engineering, Purdue University, West Lafayette, IN 47907, USA.

出版信息

IEEE Trans Image Process. 2011 Mar;20(3):625-40. doi: 10.1109/TIP.2010.2071390. Epub 2010 Sep 2.

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.

摘要

高维信号的协方差估计是统计信号分析和机器学习中一个经典的难题。在本文中,我们提出了一种最大似然 (ML) 方法来进行协方差估计,该方法采用了一种新颖的非线性稀疏约束。更具体地说,协方差被约束为具有特征分解,可以表示为稀疏矩阵变换 (SMT)。SMT 由称为 Givens 旋转的成对坐标旋转的乘积形成。使用这个框架,可以通过对数似然函数的贪婪优化来有效地估计协方差,并且可以使用交叉验证过程来有效地计算 Givens 旋转的数量。该估计器通常是正定的和条件良好的,即使在样本量有限的情况下也是如此。对模拟数据、标准高光谱数据和人脸图像集的组合进行的实验表明,基于 SMT 的协方差估计对于各种不同的类别和样本大小,始终比传统的收缩估计和最近提出的图形套索估计更为准确。新协方差估计的一个重要性质是,它自然可以使用 SMT 表示来快速实现估计的特征变换。实际上,SMT 可以被视为经典快速傅里叶变换 (FFT) 的推广,因为它使用“蝴蝶”来表示正交变换。然而,与 FFT 不同,SMT 可用于对一般非平稳信号进行快速特征信号分析。

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