Multiple approaches for depth estimation in deep-ocean environments are discussed. First, a multispectral transformation for depth estimation (MSTDE) method based on the low-spatial-frequency interference in a constant sound speed is derived to estimate the source depth directly. To overcome the limitation of real sound-speed profiles and source bandwidths on the accuracy of MSTDE, a method based on a convolution neural network (CNN) and conventional beamforming (CBF) preprocessing is proposed. Further, transfer learning is adapted to tackle the effect of noise on the estimation result. At-sea data are used to test the performance of these methods, and results suggest that (1) the MSTDE can estimate the depth; however, the error increases with distance; (2) MSTDE error can be moderately compensated through a calculated factor; (3) the performance of deep-learning approach using CBF preprocessing is much better than those of MSTDE and traditional CNN.
CITATION STYLE
Wang, W., Wang, Z., Su, L., Hu, T., Ren, Q., Gerstoft, P., & Ma, L. (2020). Source depth estimation using spectral transformations and convolutional neural network in a deep-sea environment. The Journal of the Acoustical Society of America, 148(6), 3633–3644. https://doi.org/10.1121/10.0002911
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