Title :
Angle estimation for small sample size with fast eigenvector-free subspace method
Author_Institution :
FGAN-FFM, Wachtberg, Germany
fDate :
6/1/1999 12:00:00 AM
Abstract :
Subspace or projection methods, such as MUSIC, have been shown to perform excellently when used for angle-of-arrival estimation, especially in the case of small sample size. The drawback of those methods is their heavy computational load when used for arrays with a large number of elements. The paper investigates the performance of a fast subspace-estimation method which has been proposed for the closely related problem of adaptive spatial jammer suppression. This new method, called matrix transformation projection (MTP), is based on a general transformation of the covariance matrix formed from snapshots of an array of sensors. To evaluate the statistical properties of the MTP when used for angle estimation, the expectation of the corresponding angle spectra has been analytically derived. As the paper is addressing the small sample size performance of subspace methods (instead of the asymptotic one), the conventional perturbation analysis needed to be extended to second order. The resulting bias of the DOA estimates has been calculated and shown along with corresponding simulations to confirm the accuracy of the theoretical results. A comparison of these results for MTP showed the closeness to those of MUSIC even for small sample sizes, but the necessary computational load of MTP is significantly lower
Keywords :
array signal processing; covariance matrices; direction-of-arrival estimation; signal sampling; spectral analysis; statistical analysis; DOA estimates; MUSIC; adaptive spatial jammer suppression; angle spectra; angle-of-arrival estimation; computational load; covariance matrix; fast eigenvector-free subspace method; fast subspace-estimation method; general transformation; matrix transformation projection; projection methods; second order perturbation analysis; sensors array; simulations; small sample size performance; snapshots; statistical properties; subspace methods;
Journal_Title :
Radar, Sonar and Navigation, IEE Proceedings -
DOI :
10.1049/ip-rsn:19990365