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ArmanTTS single-speaker Persian dataset

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arxiv 2304.03585 v1 pith:ACKCM322 submitted 2023-04-07 cs.CL

ArmanTTS single-speaker Persian dataset

classification cs.CL
keywords datasetarmanttsmodelpersianspeechvaluedeeplearning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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TTS, or text-to-speech, is a complicated process that can be accomplished through appropriate modeling using deep learning methods. In order to implement deep learning models, a suitable dataset is required. Since there is a scarce amount of work done in this field for the Persian language, this paper will introduce the single speaker dataset: ArmanTTS. We compared the characteristics of this dataset with those of various prevalent datasets to prove that ArmanTTS meets the necessary standards for teaching a Persian text-to-speech conversion model. We also combined the Tacotron 2 and HiFi GAN to design a model that can receive phonemes as input, with the output being the corresponding speech. 4.0 value of MOS was obtained from real speech, 3.87 value was obtained by the vocoder prediction and 2.98 value was reached with the synthetic speech generated by the TTS model.

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