Mapping uncertainties involved in sound source reconstruction with a cross-spectral-matrix-based Gibbs sampler.

Autor: Antoni, Jérôme, Vanwynsberghe, Charles, Le Magueresse, Thibaut, Bouley, Simon, Gilquin, Laurent
Předmět:
Zdroj: Journal of the Acoustical Society of America; Dec2019, Vol. 146 Issue 6, p4947-4961, 15p
Abstrakt: The reconstruction of sound sources by using inverse methods is known to be prone to estimation errors due to measurement noise, model mismatch, and poor conditioning of the inverse problem. This paper introduces a solution to map the estimation errors together with the reconstructed sound sources. From a Bayesian perspective, it initializes a Gibbs sampler with the Bayesian focusing method. The proposed Gibbs sampler is shown to converge within a few iterations, which makes it realistic for practical purposes. It also turns out to be very flexible in various scenarios. One peculiarity is the capability to directly operate on the cross-spectral matrix. Another one is to easily accommodate sparse priors. Eventually, it can also account for uncertainties in the microphone positions, which reinforces the regularization of the inverse problem. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index