The small error approximation is used to derive a linear relationship between the source parameters (i.e. power levels and directions of arrival) and a measurement of the covariance error matrix, defined as the difference between a nonparametric consistent estimate of the spectral density matrix and a covariance model from the scenario parameters. The resulting framework allows the design of a Kalman-like algorithm which provides a simultaneous and adaptive estimation of the source parameter, no matter what the source waveform or modulation. Good performance is expected, mainly in the presence of sensors malfunctioning, low signal-to-noise ratio, etc.Peer ReviewedPostprint (published version
When sensor position errors exist, the performance of recently proposed interference-plus-noise cova...
This paper presents a computationally fast algorithm for estimating, both, the system and observatio...
Estimation at a specific time or also known as the filtering technique in estimation and control the...
The small error approximation is used to derive a linear relationship between the source parameters ...
The small error approximation is used to derive a linear relationship between the source parameters ...
The small error approximation is used to derive a linear relationship between the source parameters ...
The small error approximation is used to derive a linear relationship between the source parameters ...
This paper presents a generic approach to model the noise covariance associated with discrete sensor...
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In a statistical inference scenario, the estimation of target signal or its parameters is done by pr...
This Thesis develops algorithms for the processing of data from an array of sensors. Of particular i...
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This thesis compare methods of noise covariance estimation with the aim to improve the percision of ...
A method of parameter estimation is presented for a class of problems in which the desired signal is...
When sensor position errors exist, the performance of recently proposed interference-plus-noise cova...
This paper presents a computationally fast algorithm for estimating, both, the system and observatio...
Estimation at a specific time or also known as the filtering technique in estimation and control the...
The small error approximation is used to derive a linear relationship between the source parameters ...
The small error approximation is used to derive a linear relationship between the source parameters ...
The small error approximation is used to derive a linear relationship between the source parameters ...
The small error approximation is used to derive a linear relationship between the source parameters ...
This paper presents a generic approach to model the noise covariance associated with discrete sensor...
This paper considers the problem of estimating the Direction-of-Arrival (DOA) of one or more signals...
In a statistical inference scenario, the estimation of target signal or its parameters is done by pr...
This Thesis develops algorithms for the processing of data from an array of sensors. Of particular i...
Abstract—Adaptive beamforming methods degrade in the presence of model mismatch. In this paper, we d...
This paper concerns the performance of the class of signal subspace fitting algorithms for signal pa...
This thesis compare methods of noise covariance estimation with the aim to improve the percision of ...
A method of parameter estimation is presented for a class of problems in which the desired signal is...
When sensor position errors exist, the performance of recently proposed interference-plus-noise cova...
This paper presents a computationally fast algorithm for estimating, both, the system and observatio...
Estimation at a specific time or also known as the filtering technique in estimation and control the...