Abstract
This study proposed a matched field source localization method based on
tensor decomposition. By considering the advantages of tensors in
multidimensional data processing, a three-dimensional tensor signal
model of space-time-frequency is constructed, and the signal subspace is
estimated using high-order singular value decomposition (HOSVD). The
source position is estimated by matching the measured data tensor signal
subspace with the replica field tensor signal subspace. The S5 event
data of SWellEx-96 is processed by the proposed tensor-based
matched-field processing (TMFP). The comparison with the results of
conventional matched field processing (MFP) shows that TMFP has a better
suppression effect on ambient noise under low SNR and better source
localization performance.