Looking for equivalence between maximum likelihood and sparse DOA estimators

Sparse Direction-of-Arrival estimators depend on the regularization parameter λwhich is often empirically tuned.In this work, conducted under the vectorized covariance matrix model, we are looking for theoretical equivalence between the Maximum Likelihood (ML) and sparse estimators. We show that und...

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Bibliographic Details
Main Authors: Thomas Aussaguès, Anne Ferréol, Alice Delmer, Pascal Larzabal
Format: Article
Language:English
Published: Elsevier 2025-06-01
Series:Science Talks
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Online Access:http://www.sciencedirect.com/science/article/pii/S2772569325000313
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Summary:Sparse Direction-of-Arrival estimators depend on the regularization parameter λwhich is often empirically tuned.In this work, conducted under the vectorized covariance matrix model, we are looking for theoretical equivalence between the Maximum Likelihood (ML) and sparse estimators. We show that under mild conditions, λ can be chosen thanks to the distribution of the minimum of the ML criterion in the case of two impinging sources. We derive this distribution under complex non-circular Gaussian noise. The corresponding λ choice is θ-invariant, only requiring an upper bound on the number of sources. Furthermore, it guarantees the global minimum of the sparse ℓ0-regularized criterion to be the ML solution.Numerical experiments confirm that, for the proposed λ, sparse and ML estimators yield the same statistical performance.
ISSN:2772-5693