In this paper, a new Bayesian array signal model structure based on signal reconstruction is proposed, that allows us to define a posterior distribution on the parameter space, which is applicable to both wideband and narrowband signals. Unfortunately, a direct evaluation of this distribution and of its features, including posterior model probabilities, requires evaluation of some complicated high-dimensional integrals. We develop an efficient hybrid sampling algorithm based on reversible jump Markov Chain Monte Carlo methods to jointly detect and estimate the sources impinging on a single array of sensors in Gaussian noise. This algorithm provides higher resolution than traditional wideband methods. The accuracy of the structure and the validity of this method are well verified by the simulation.
[1]
Shahrokh Valaee,et al.
A unitary transformation algorithm for wideband array processing
,
1992,
[1992] IEEE Sixth SP Workshop on Statistical Signal and Array Processing.
[2]
Petar M. Djuric,et al.
A model selection rule for sinusoids in white Gaussian noise
,
1996,
IEEE Trans. Signal Process..
[3]
Don H. Johnson,et al.
Array Signal Processing: Concepts and Techniques
,
1993
.
[4]
T. Kirubarajan,et al.
Wideband array signal processing using MCMC methods
,
2003,
2003 IEEE International Conference on Acoustics, Speech, and Signal Processing, 2003. Proceedings. (ICASSP '03)..