A Learned-SVD Approach to the Electromagnetic Inverse Source Problem

Author:

Capozzoli Amedeo1,Catapano Ilaria2ORCID,Cinotti Eliana12ORCID,Curcio Claudio1ORCID,Esposito Giuseppe2ORCID,Gennarelli Gianluca2,Liseno Angelo1,Ludeno Giovanni2ORCID,Soldovieri Francesco2ORCID

Affiliation:

1. Dipartimento di Ingegneria Elettrica e delle Tecnologie dell’Informazione (DIETI), Università di Napoli Federico II, Via Claudio 21, I 80125 Napoli, Italy

2. Consiglio Nazionale delle Ricerche, Istituto per il Rilevamento Elettromagnetico dell’Ambiente (IREA), Via Diocleziano 328, I 80124 Napoli, Italy

Abstract

We propose an artificial intelligence approach based on deep neural networks to tackle a canonical 2D scalar inverse source problem. The learned singular value decomposition (L-SVD) based on hybrid autoencoding is considered. We compare the reconstruction performance of L-SVD to the Truncated SVD (TSVD) regularized inversion, which is a canonical regularization scheme, to solve an ill-posed linear inverse problem. Numerical tests referring to far-field acquisitions show that L-SVD provides, with proper training on a well-organized dataset, superior performance in terms of reconstruction errors as compared to TSVD, allowing for the retrieval of faster spatial variations of the source. Indeed, L-SVD accommodates a priori information on the set of relevant unknown current distributions. Different from TSVD, which performs linear processing on a linear problem, L-SVD operates non-linearly on the data. A numerical analysis also underlines how the performance of the L-SVD degrades when the unknown source does not match the training dataset.

Publisher

MDPI AG

Reference63 articles.

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