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Low-Resource Text-to-Speech Using Specific Data and Noise Augmentation

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arxiv 2306.10152 v1 pith:G6QEVDMU submitted 2023-06-16 eess.AS cs.SD

Low-Resource Text-to-Speech Using Specific Data and Noise Augmentation

classification eess.AS cs.SD
keywords dataaugmentationtraininghoursarchitecturesspecificspeechtacotron-2
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Many neural text-to-speech architectures can synthesize nearly natural speech from text inputs. These architectures must be trained with tens of hours of annotated and high-quality speech data. Compiling such large databases for every new voice requires a lot of time and effort. In this paper, we describe a method to extend the popular Tacotron-2 architecture and its training with data augmentation to enable single-speaker synthesis using a limited amount of specific training data. In contrast to elaborate augmentation methods proposed in the literature, we use simple stationary noises for data augmentation. Our extension is easy to implement and adds almost no computational overhead during training and inference. Using only two hours of training data, our approach was rated by human listeners to be on par with the baseline Tacotron-2 trained with 23.5 hours of LJSpeech data. In addition, we tested our model with a semantically unpredictable sentences test, which showed that both models exhibit similar intelligibility levels.

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