Title :
Parametric methods for spatial signal processing in the presence of unknown colored noise fields
Author :
Le Cadre, J. Pierre
Author_Institution :
GERDSM, Six-Fours-les-Plages, France
fDate :
7/1/1989 12:00:00 AM
Abstract :
Two methods for estimation of noise correlations along an array of sensors are presented. Both rely on a parametric (autoregressive moving average) noise model. The model has the advantage of describing the noise correlations by a small number of parameters and can be applied to a great variety of physical noises. The first method is related to the calculation of the likelihood of whitened observations, and the second is related to Pisarenko´s method (1973) applied to whitened observations. Both methods are obtained by optimization of a criterion and are iterative. The noise estimates can be used for sensor-output whitening and it then provides a means to improve array processing performance. The two methods perform well, both on simulated and real data. However, the first method seems simpler and more robust than the second
Keywords :
signal processing; spectral analysis; array of sensors; autoregressive moving average; iterative; noise correlations; parametric; sensor-output whitening; spatial signal processing; spectral analysis; unknown colored noise fields; Additive noise; Array signal processing; Colored noise; Degradation; Sensor arrays; Signal processing; Spatial resolution; Thermal sensors; Traffic control; White noise;
Journal_Title :
Acoustics, Speech and Signal Processing, IEEE Transactions on