Quantitative signal subspace imaging

Abstract We develop and analyze a quantitative signal subspace imaging method for single-frequency array imaging. This method is an extension to multiple signal classification which uses (i) the noise subspace to determine the location and support of targets, and (ii) the signal subspace to recover...

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Bibliographic Details
Published inInverse problems Vol. 37; no. 12; pp. 125006 - 125028
Main Authors González-Rodríguez, Pedro, Kim, Arnold D, Tsogka, Chrysoula
Format Journal Article
LanguageEnglish
Published IOP Publishing 01.12.2021
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Summary:Abstract We develop and analyze a quantitative signal subspace imaging method for single-frequency array imaging. This method is an extension to multiple signal classification which uses (i) the noise subspace to determine the location and support of targets, and (ii) the signal subspace to recover quantitative information about the targets. For point targets, we are able to recover the complex reflectivity and for an extended target under the Born approximation, we are able to recover a scalar quantity that is related to the product of the volume and relative dielectric permittivity of the target. Our resolution analysis for a point target demonstrates this method is capable of achieving exact recovery of the complex reflectivity at subwavelength resolution. Additionally, this resolution analysis shows that noise in the data effectively acts as a regularization to the imaging functional resulting in a method that is surprisingly more robust and effective with noise than without noise.
Bibliography:IP-103209.R1
ISSN:0266-5611
1361-6420
DOI:10.1088/1361-6420/ac349b