An EVD Algorithm for Para-Hermitian Polynomial Matrices 论文
2007IEEE Transactions on Signal Processing引用 219
Blind Source Separation TechniquesImage and Signal Denoising MethodsAdvanced Adaptive Filtering Techniques
摘要
An algorithm for computing the eigenvalue decomposition of a para-Hermitian polynomial matrix is described. This amounts to diagonalizing the polynomial matrix by means of a paraunitary "similarity" transformation. The algorithm makes use of "elementary paraunitary transformations" and constitutes a generalization of the classical Jacobi algorithm for conventional Hermitian matrix diagonalization. A proof of convergence is presented. The application to signal processing is highlighted in terms of strong decorrelation and multichannel data compaction. Some simulated results are presented to demonstrate the capability of the algorithm