2022
DOI: 10.48550/arxiv.2204.04127
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Karaoker: Alignment-free singing voice synthesis with speech training data

Abstract: Existing singing voice synthesis models (SVS) are usually trained on singing data and depend on either error-prone timealignment and duration features or explicit music score information. In this paper, we propose Karaoker, a multispeaker Tacotron-based model conditioned on voice characteristic features that is trained exclusively on spoken data without requiring time-alignments. Karaoker synthesizes singing voice following a multi-dimensional template extracted from a source waveform of an unseen speaker/sing… Show more

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