Title :
Efficient Deconvolution of Ground-Penetrating Radar Data
Author :
Schmelzbach, Cedric ; Huber, Emanuel
Author_Institution :
Dept. of Earth Sci., ETH Zurich, Zurich, Switzerland
Abstract :
The time (vertical) resolution enhancement of ground-penetrating radar (GPR) data by deconvolution is a long-standing problem due to the mixed-phase characteristics of the source wavelet. Several approaches have been proposed, which take the mixed-phase nature of the GPR source wavelet into account. However, most of these schemes are usually laborious and/or computationally intensive and have not yet found widespread use. Here, we propose a simple and fast approach to GPR deconvolution that requires only a minimal user input. First, a trace-by-trace minimum-phase (spiking) deconvolution is applied to remove the minimum-phase part of the mixed-phase GPR wavelet. Then, a global phase rotation is applied to maximize the sparseness (kurtosis) of the minimum-phase deconvolved data to correct for phase distortions that remain after the minimum-phase deconvolution. Applications of this scheme to synthetic and field data demonstrate that a significant improvement in image quality can be achieved, leading to deconvolved data that are a closer representation of the underlying reflectivity structure than the input or minimum-phase deconvolved data. Synthetic-data tests indicate that, because of the temporal and spatial correlation inherent in the GPR data due to the frequency- and wavenumber-bandlimited nature of the GPR source wavelet and the reflectivity structure, a significant number of samples are required for a reliable sparseness (kurtosis) estimate and stable phase rotation. This observation calls into question the blithe application of kurtosis-based methods within short time windows such as that for time-variant deconvolution.
Keywords :
deconvolution; geophysical image processing; ground penetrating radar; remote sensing by radar; GPR source wavelet frequency-bandlimited nature; GPR source wavelet mixed-phase nature; GPR source wavelet wavenumber-bandlimited nature; field data; global phase rotation; ground-penetrating radar data deconvolution; image quality; kurtosis-based method; minimum-phase deconvolved data kurtosis; minimum-phase deconvolved data sparseness; phase distortion; source wavelet mixed-phase characteristics; synthetic data; time resolution enhancement; time-variant deconvolution; trace-by-trace minimum-phase deconvolution; Convolution; Data models; Deconvolution; Estimation; Ground penetrating radar; Mathematical model; Standards; Deconvolution; ground-penetrating radar (GPR); inverse filtering; signal processing;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2015.2419235