FMCW sparse array imaging and restoration for microwave gauging
The application of imaging radar to microwave level gauging represents a prospect of increasing the reliability of target detection. The aperture size of the used sensor determines the underlying azimuthal resolution. In consequence, when FMCW-based multistatic radar (FMCW: frequency modulated conti...
Main Authors: | , |
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Format: | Article |
Language: | deu |
Published: |
Copernicus Publications
2012-11-01
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Series: | Advances in Radio Science |
Online Access: | http://www.adv-radio-sci.net/10/333/2012/ars-10-333-2012.pdf |
Summary: | The application of imaging radar to microwave level gauging represents a
prospect of increasing the reliability of target detection. The aperture
size of the used sensor determines the underlying azimuthal resolution. In
consequence, when FMCW-based multistatic radar (FMCW: frequency modulated
continuous wave) is used, the number of antennas dictates this essential
property of an imaging system. The application of a sparse array leads to an
improvement of the azimuthal resolution by keeping the number of array
elements constant with the cost of increased side lobe level. Therefore,
ambiguities occur within the imaging process. This problem can be modelled
by a point spread function (PSF) which is common in image processing. Hence,
an inverse system to the imaging system is needed to restore unique
information of existing targets within the observed radar scenario.
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In general, the process of imaging is of ill-conditioned nature and
therefore appropriate algorithms have to be applied. The present paper first
develops the degradation model, namely PSF, of an imaging system based on a
uniform linear array in time domain. As a result, range and azimuth
dimensions are interdependent and the process of imaging has to be
reformulated in one dimension. Matrix-based approaches can be adopted in
this way. The second part applies two computational methods to the given
inverse problem, namely quadratic and non-quadratic regularization. Notably,
the second one exhibits an ability to suppress ambiguities. This can be
demonstrated with the results of both, simulations and measurements, and
enables sparse array imaging to localize point targets more unambiguously. |
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ISSN: | 1684-9965 1684-9973 |