Abstract

This research presents a neural network based voice conversion model. While it is a known fact that voiced sounds and prosody are the most important component of the voice conversion framework, what is not known is their objective contributions particularly in a noisy and uncontrolled environment. This model uses a 3 layer feedforward neural network to map the Linear prediction analysis coefficients of a source speaker to the acoustic vector space of the target speaker with a view to objectively determine the contributions of the voiced, unvoiced and supra-segmental components of sounds to the voice conversion model. Results showed that vowels “a”, “i”, “o” have the most significant contribution in the conversion success. The voiceless sounds were also found to be most affected by the noisy training data. An average noise level of 40 dB above the noise floor were found to degrade the voice conversion success by 55.14 percent relative to the voiced sounds. The result also show that for cross-gender voice conversion, prosody conversion is more significant in scenarios where a female is the target speaker.

Highlights

  • Voice conversion refers to a well-established signal processing technique used to make words uttered by one person usually the source speaker sound like another person, the target speaker [1]

  • The overall success of the algorithm for parallel and nonparallel utterances were obtained by calculating the percentage spectral increase or decrease between source converted Mel-Cepstral Distortion (MCD) and target - converted MCD

  • This work revealed the contribution of vowels and prosody in neural network based voice conversion model trained with noisy data

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Summary

Introduction

Voice conversion refers to a well-established signal processing technique used to make words uttered by one person usually the source speaker sound like another person, the target speaker [1]. This signal processing technique is a well-researched area that has experienced lots of improvement from decades of research efforts at solving challenges associated with the process. The phonemes are combined discretely and synthesized In this method, there is no source or target speaker, only speeches. Parametric voice conversion on the other hand can morph several source speakers into a single target speaker whose voice model has been built beforehand

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