Abstract:
A seafloor classification methodology, based on a parameterization of the reverberation probability density function in conjunction with neural network classifiers, is ev...Show MoreMetadata
First Page of the Article
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Abstract:
A seafloor classification methodology, based on a parameterization of the reverberation probability density function in conjunction with neural network classifiers, is evaluated through computer simulations. Different seafloor provides are represented by a number of scatterer distributions exhibiting various degrees of departure from the nominal Poisson distribution. Using a computer simulation program, these distributions were insonified at different spatial scales by varying the transmitted pulse length. The statistical signature obtained consists of reverberation kurtosis estimates as a function of pulse length. Two neural network classifiers are presented with the task of discriminating among the various scatterer distributions based on obtained acoustic signatures. The results indicate that this approach offers considerable promise for practical, realizable solutions to the problem of remote seafloor classification.<>
Published in: IEEE Journal of Oceanic Engineering ( Volume: 18, Issue: 2, April 1993)
DOI: 10.1109/48.219527
First Page of the Article
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