Empirical Study Incorporating Linguistic Knowledge on Filled Pauses for Personalized Spontaneous Speech Synthesis
We present a comprehensive empirical study for personalized spontaneous speech synthesis on the basis of linguistic knowledge. With the advent of voice cloning for reading-style speech synthesis, a new voice cloning paradigm for human-like and spontaneous speech synthesis is required. We, therefore,...
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Zusammenfassung: | We present a comprehensive empirical study for personalized spontaneous
speech synthesis on the basis of linguistic knowledge. With the advent of voice
cloning for reading-style speech synthesis, a new voice cloning paradigm for
human-like and spontaneous speech synthesis is required. We, therefore, focus
on personalized spontaneous speech synthesis that can clone both the
individual's voice timbre and speech disfluency. Specifically, we deal with
filled pauses, a major source of speech disfluency, which is known to play an
important role in speech generation and communication in psychology and
linguistics. To comparatively evaluate personalized filled pause insertion and
non-personalized filled pause prediction methods, we developed a speech
synthesis method with a non-personalized external filled pause predictor
trained with a multi-speaker corpus. The results clarify the position-word
entanglement of filled pauses, i.e., the necessity of precisely predicting
positions for naturalness and the necessity of precisely predicting words for
individuality on the evaluation of synthesized speech. |
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DOI: | 10.48550/arxiv.2210.07559 |