Quasi-ray Gaussian beam algorithms for subsurface sensing in the presence of a moderately rough air-soil interface

A major source of variability in ground penetrating radar (GPR) interrogating signals is related to reflection from, and (double) transmission through, the rough unknown air-soil interface which obscures the useful target-scattered signals. These considerations motivated our recent investigations to...

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Hauptverfasser: Galdi, V., Haihua Feng, Pavlovich, J., Castanon, D.A., Clem Karl, W., Felsen, L.B.
Format: Tagungsbericht
Sprache:eng
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Zusammenfassung:A major source of variability in ground penetrating radar (GPR) interrogating signals is related to reflection from, and (double) transmission through, the rough unknown air-soil interface which obscures the useful target-scattered signals. These considerations motivated our recent investigations toward a more robust, physics-based, adaptive approach to subsurface imaging in the presence of a moderately (both in height and slope) rough air-soil interface. The proposed approach entails prior estimation of the deterministic gross features of the rough interface and subsequent exploitation of this information to enhance underground target imaging. So far, this approach has been applied to two-dimensional (2D) frequency-stepped and pulsed GPR configurations, for slightly lossy soils and low-contrast mine-like targets, yielding encouraging results. In this paper, we briefly review the proposed framework and discuss some representative results.
DOI:10.1109/APS.2002.1016759