In this paper we study the impact of polynomial or broadband subspace decompositions on any subsequent processing, which here uses the example of a broadband angle of arrival estimation technique using a recently proposed polynomial MUSIC (P-MUSIC) algorithm. The subspace decompositions are performed by iterative polynomial EVDs, which differ in their approximations to diagonalise and spectrally majorise s apce-time covariance matrix.We here show that a better diagonalisation has a significant impact on the accuracy of defining broadband signal and noise subspaces, demonstrated by a much higher accuracy of the P-MUSIC spectrum
Direction of arrival algorithms which exploit the eigenstructure of the spatial covariance matrix (s...
The polynomial matrix EVD (PEVD) is an extension of the conventional eigenvalue decomposition (EVD) ...
Direction of arrival (DoA) estimation for sound source localization is increasingly prevalent in mod...
In this paper we study the impact of polynomial or broadband subspace decompositions on any subseque...
A large family of broadband angle of arrival estimation algorithms are based on the coherent signal ...
This thesis is concerned with the problem of broadband angle of arrival (AoA) estimation for sensor ...
This paper reviews and compares three different linear algebraic signal subspace techniques for broa...
The popular MUSIC algorithm has been recently extended to broadband scenarios through the use of pol...
This paper reviews and compares three different linear algebraic signal subspace techniques for angl...
Polynomial matrix eigenvalue decomposition (PEVD) algorithms have been shown to enable a solution to...
This paper reviews and compares three different linear algebraic signal subspace techniques for angl...
The multiple signal classification (MUSIC) algorithm for direction of arrival estimation is defined ...
Direction of arrival estimation is a crucial aspect of many active and passive systems, including ra...
Direction of arrival algorithms which exploit the eigenstructure of the spatial covariance matrix (s...
The polynomial matrix EVD (PEVD) is an extension of the conventional eigenvalue decomposition (EVD) ...
Direction of arrival (DoA) estimation for sound source localization is increasingly prevalent in mod...
In this paper we study the impact of polynomial or broadband subspace decompositions on any subseque...
A large family of broadband angle of arrival estimation algorithms are based on the coherent signal ...
This thesis is concerned with the problem of broadband angle of arrival (AoA) estimation for sensor ...
This paper reviews and compares three different linear algebraic signal subspace techniques for broa...
The popular MUSIC algorithm has been recently extended to broadband scenarios through the use of pol...
This paper reviews and compares three different linear algebraic signal subspace techniques for angl...
Polynomial matrix eigenvalue decomposition (PEVD) algorithms have been shown to enable a solution to...
This paper reviews and compares three different linear algebraic signal subspace techniques for angl...
The multiple signal classification (MUSIC) algorithm for direction of arrival estimation is defined ...
Direction of arrival estimation is a crucial aspect of many active and passive systems, including ra...
Direction of arrival algorithms which exploit the eigenstructure of the spatial covariance matrix (s...
The polynomial matrix EVD (PEVD) is an extension of the conventional eigenvalue decomposition (EVD) ...
Direction of arrival (DoA) estimation for sound source localization is increasingly prevalent in mod...