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Matched field source localization with Gaussian processes

  • Zoi-Heleni Michalopoulou
  • , Peter Gerstoft
  • , Diego Caviedes-Nozal
    • University of California at San Diego
    • New Jersey Institute of Technology

    Research output: Contribution to journalJournal articleResearchpeer-review

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    Abstract

    For a sparsely observed acoustic field, Gaussian processes can predict a densely sampled field on the array. The prediction quality depends on the choice of a kernel and a set of hyperparameters. Gaussian processes are applied to source localization in the ocean in combination with matched-field processing. Compared to conventional processing, the denser sampling of the predicted field across the array reduces the ambiguity function sidelobes. As the noise level increases, the Gaussian process-based processor has a distinctly higher probability of correct localization than conventional processing, due to both denoising and denser field prediction.
    Original languageEnglish
    Article number064801
    JournalJASA Express Letters
    Volume1
    Issue number6
    Number of pages8
    ISSN2691-1191
    DOIs
    Publication statusPublished - 2021

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