LPC-based feature coefficients for voice authentication tasks
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Abstract
Voice authentication is a promising biometric technique based on extracting meaningful information from the speech signal using computing a vector of feature coefficients. Based on that, this paper evaluates the effectiveness of linear predictive coefficients when combined with other simple metrics in voice authentication tasks. Linear predictive coefficients were chosen due to their relatively good performance and not-so-complicated structures compared to similar alternatives. All the feature coefficients have been evaluated through an extensive parameter space study to apprehend the main limitations and potentials of voice authentication under different scenarios. A classifier based on artificial neural networks has been implemented for such an evaluation.
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