Subspace fitting methods have grown popular for parameter estimation in many different application, for example sensor array signal processing, blind channel identification and identification of linear state space systems. Here we show that similar procedures can be used even for data models where the noise free signal gives a full rank contribution to the covariance matrix. A general weighting is introduced and the optimal weight matrix is given together with the resulting asymptotic covariance of the parameter estimates. The method works well when the number of dominating eigenvalues still is fairly small. As an example, we study estimation of direction and spread angle of a source subject to local scattering, using a uniform linear array...
Signal parameter estimation from sensor array measurements or multiple channel time series observati...
Many subspace estimation techniques assume either that the sys-tem has a calibrated array or that th...
International audienceIn array processing, a common problem is to estimate the angles of arrival of ...
Subspace based estimation using decomposition techniques such as the SVD is a powerful tool in many ...
Subspace based identification of model parameters requires a low rank data model. To obtain such a m...
This paper concerns the performance of the class of signal subspace fitting algorithms for signal pa...
This paper introduces a subspace method for the estimation of an array covariance matrix. When the r...
Subspace-based algorithms for array signal processing typically begin with an eigenvalue decompositi...
Designing estimators based on low rank signal models is a common practice in signal processing. Some...
Abstract—Covariance matrix estimates are an essential part of many signal processing algorithms, and...
Many subspace-based array signal processing algorithms assume that the noise is spatially white. In ...
Optimal Subspace Estimation (OSE) is a technique for estimating the signal subspace of a noisy data ...
ii In this dissertation, we discuss the problem of robust linear subspace estimation using low-rank ...
Subspace identification techniques have gained widespread acceptance as a method of obtaining a low-...
Abstract—Subspace-based methods rely on singular value de-composition (SVD) of the sample covariance...
Signal parameter estimation from sensor array measurements or multiple channel time series observati...
Many subspace estimation techniques assume either that the sys-tem has a calibrated array or that th...
International audienceIn array processing, a common problem is to estimate the angles of arrival of ...
Subspace based estimation using decomposition techniques such as the SVD is a powerful tool in many ...
Subspace based identification of model parameters requires a low rank data model. To obtain such a m...
This paper concerns the performance of the class of signal subspace fitting algorithms for signal pa...
This paper introduces a subspace method for the estimation of an array covariance matrix. When the r...
Subspace-based algorithms for array signal processing typically begin with an eigenvalue decompositi...
Designing estimators based on low rank signal models is a common practice in signal processing. Some...
Abstract—Covariance matrix estimates are an essential part of many signal processing algorithms, and...
Many subspace-based array signal processing algorithms assume that the noise is spatially white. In ...
Optimal Subspace Estimation (OSE) is a technique for estimating the signal subspace of a noisy data ...
ii In this dissertation, we discuss the problem of robust linear subspace estimation using low-rank ...
Subspace identification techniques have gained widespread acceptance as a method of obtaining a low-...
Abstract—Subspace-based methods rely on singular value de-composition (SVD) of the sample covariance...
Signal parameter estimation from sensor array measurements or multiple channel time series observati...
Many subspace estimation techniques assume either that the sys-tem has a calibrated array or that th...
International audienceIn array processing, a common problem is to estimate the angles of arrival of ...