Title :
A robust neural network tool for the identification of buried cylinders by a subsurface radar system
Author :
Caorsi, S. ; Cevini, G.
Abstract :
This paper is concerned with the application of a neural network based algorithm to face the electromagnetic inverse scattering problem of reconstructing dielectric cylinders with time-domain data, as those that can he available at the receiving terminals of a short-pulse GPR (Ground Penetrating Radar) [l] system. The algorithm can he suitably applied when some a-priori information on the problem are available. The exploitable data are the transient electromagnetic fields scattered by the buried target and collected by a receiver antenna. Some numerical results will he presented concerning the localization and the reconstruction of a circular cylinder in a 2D scenario. Moreover, the neural network robustness will he tested against noise and corruptions in the a-priori information.
Keywords :
Dielectrics; Electromagnetic measurements; Electromagnetic scattering; Ground penetrating radar; Image reconstruction; Inverse problems; Neural networks; Radar scattering; Receiving antennas; Robustness;
Conference_Titel :
Radar Conference, 2004. EURAD. First European
Conference_Location :
Amsterdam, The Netherlands
Print_ISBN :
1-58053-993-9