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Artificial neural networks are applied to the problem of recognising people from their voices. With input vectors consisting of time-normalised cepstral coefficients, radial basis function networks are shown to exceed the speaker classification performance of multilayer perceptrons. With an optimised input vocabulary and the use of multiple observations, error-free results are obtained on a 50 speaker identification task.

Type

Conference paper

Publication Date

01/01/2019

Pages

107 - 110