首页> 外文期刊>IEEE Transactions on Signal Processing >Adaptive eigendecomposition of data covariance matrices based on first-order perturbations
【24h】

Adaptive eigendecomposition of data covariance matrices based on first-order perturbations

机译:基于一阶扰动的数据协方差矩阵的自适应特征分解

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

In this paper, new algorithms for adaptive eigendecomposition of time-varying data covariance matrices are presented. The algorithms are based on a first-order perturbation analysis of the rank-one update for covariance matrix estimates with exponential windows. Different assumptions on the eigenvalue structure lead to three distinct algorithms with varying degrees of complexity. A stabilization technique is presented and both issues of initialization and computational complexity are discussed. Computer simulations indicate that the new algorithms can achieve the same performance as a direct approach in which the exact eigendecomposition of the updated sample covariance matrix is obtained at each iteration. Previous algorithms with similar performance require O(LM/sup 2/) complex operations per iteration, where L and M respectively denote the data vector and signal-subspace dimensions, and involve either some form of Gram-Schmidt orthogonalization or a nonlinear eigenvalue search. The new algorithms have parallel structures, sequential operation counts of order O(LM) or less, and do not involve any of the above steps. One particular algorithm can be used to update the complete signal-subspace eigenstructure in 5LM complex operations. This represents an order of magnitude improvement in computational complexity over existing algorithms with similar performance. Finally, a simplified local convergence analysis of one of the algorithms shows that it is stable and converges in the mean to the true eigendecomposition. The convergence is geometrical and is characterized by a single time constant.
机译:本文提出了时变数据协方差矩阵自适应特征分解的新算法。该算法基于具有指数窗的协方差矩阵估计的秩更新的一阶扰动分析。对特征值结构的不同假设导致三种不同算法的复杂程度有所不同。提出了一种稳定技术,并讨论了初始化和计算复杂性两个问题。计算机仿真表明,新算法可实现与直接方法相同的性能,在直接方法中,每次迭代均获得更新后的样本协方差矩阵的精确特征分解。具有类似性能的先前算法每次迭代需要O(LM / sup 2 /)复杂的操作,其中L和M分别表示数据矢量和信号子空间维,并且涉及某种形式的Gram-Schmidt正交化或非线性特征值搜索。新算法具有并行结构,顺序操作计数为O(LM)或更小,并且不涉及上述任何步骤。在5LM复杂操作中,可以使用一种特定的算法来更新完整的信号子空间本征结构。这表示与具有类似性能的现有算法相比,计算复杂度提高了一个数量级。最后,对其中一种算法的简化局部收敛分析表明,该算法是稳定的,并且均值收敛到真实的本征分解。收敛是几何的,其特征在于单个时间常数。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号