Mathematical models for the improvement of detection techniques of industrial noise sources from acoustic images
Academic Article
Publication Date:
2021
abstract:
In this paper, a procedure for the detection of the sources of industrial noise and the evaluation of their distances is introduced. The above method is based on the analysis of acoustic and optical data recorded by an acoustic camera. In order to improve the resolution of the data, interpolation and quasi interpolation algorithms for digital data processing have been used, such as the bilinear, bicubic, and sampling Kantorovich (SK). The experimental tests show that the SK algorithm allows to perform the above task more accurately than the other considered methods.
Iris type:
01.01 Articolo in rivista
Keywords:
acoustic images; applied mathematics; beamforming; image reconstruction; industrial noise; sampling Kantorovich algorithm
List of contributors:
D'Alessandro, Francesco
Published in: