Abstract-This is the second of a two-part paper dealing with the performance of subspace-based algorithms for narrow-hand direction-of-arrival (DOA) estimation when the array manifold and noise covariance are not correctly modeled. In Part I, the performance of the MUSIC algorithm was investigated. In Part 11, we extend this analysis to multidimensional (MD) subspace-based algorithms including deterministic (or conditional) max-imum likelihood, MD-MUSIC, weighted subspace fitting (WSF), MODE, and ESPRIT. A general expression for the variance of the DOA estimates is presented that can be applied to any of the above algorithms and to any of a wide variety of scenarios (e.g., gain/phase errors, mutual coupling, sensor po-sition errors, noise c...
Although the eigen-based subspace algorithms such as MUSIC and ESPRIT has been proven to be superior...
In the last decade, the subspace approach has found prominence in the problem of estimating directio...
The effect of using a spatially smoothed forward-backward covariance matrix on the performance of we...
This is the second of a two-part paper dealing with the performance of subspacebased algorithms for ...
94305 Abatracf- T h e recently introduced class of stlbspace fit-ling algorithms for sensor array si...
A unified performance analysis of subspace-based algorithms for direction-of-arrival (DOA) estimatio...
Signal parameter estimation and specically direction of arrival (DOA) es-timation for sensor array d...
A unified statistical performance analysis using subspace perturbation expansions is applied to subs...
ln this paper, the effect of spatial smoothing (Forward smoothing and Forward-Backward smoothing) on...
In this paper, the effect of spatial smoothing (Forward smoothing and Forward-Backward smoothing) on...
In the direction of arrival (DOA) estimation problem, we encounter both finite data and insufficient...
In this paper, a unified statistical performance analysis using perturbation expansions is applied t...
A performance analysis of signal subspace-based algorithms for directions-of-arrival (DOA) estimatio...
This paper explores how angle of arrival (AoA) estimation using the multiple signal classification (...
This correspondence presents a statistical performance analysis of subspace-based directions-of-arri...
Although the eigen-based subspace algorithms such as MUSIC and ESPRIT has been proven to be superior...
In the last decade, the subspace approach has found prominence in the problem of estimating directio...
The effect of using a spatially smoothed forward-backward covariance matrix on the performance of we...
This is the second of a two-part paper dealing with the performance of subspacebased algorithms for ...
94305 Abatracf- T h e recently introduced class of stlbspace fit-ling algorithms for sensor array si...
A unified performance analysis of subspace-based algorithms for direction-of-arrival (DOA) estimatio...
Signal parameter estimation and specically direction of arrival (DOA) es-timation for sensor array d...
A unified statistical performance analysis using subspace perturbation expansions is applied to subs...
ln this paper, the effect of spatial smoothing (Forward smoothing and Forward-Backward smoothing) on...
In this paper, the effect of spatial smoothing (Forward smoothing and Forward-Backward smoothing) on...
In the direction of arrival (DOA) estimation problem, we encounter both finite data and insufficient...
In this paper, a unified statistical performance analysis using perturbation expansions is applied t...
A performance analysis of signal subspace-based algorithms for directions-of-arrival (DOA) estimatio...
This paper explores how angle of arrival (AoA) estimation using the multiple signal classification (...
This correspondence presents a statistical performance analysis of subspace-based directions-of-arri...
Although the eigen-based subspace algorithms such as MUSIC and ESPRIT has been proven to be superior...
In the last decade, the subspace approach has found prominence in the problem of estimating directio...
The effect of using a spatially smoothed forward-backward covariance matrix on the performance of we...