CLLGNESDFeb 25, 2017

Deep Voice: Real-time Neural Text-to-Speech

arXiv:1702.07825v2658 citations
Originality Incremental advance
AI Analysis

This work addresses the need for efficient and flexible neural speech synthesis, though it is incremental by building on prior methods like WaveNet.

The authors tackled the problem of building a production-quality text-to-speech system using deep neural networks, achieving inference faster than real time with up to 400x speedups over existing implementations.

We present Deep Voice, a production-quality text-to-speech system constructed entirely from deep neural networks. Deep Voice lays the groundwork for truly end-to-end neural speech synthesis. The system comprises five major building blocks: a segmentation model for locating phoneme boundaries, a grapheme-to-phoneme conversion model, a phoneme duration prediction model, a fundamental frequency prediction model, and an audio synthesis model. For the segmentation model, we propose a novel way of performing phoneme boundary detection with deep neural networks using connectionist temporal classification (CTC) loss. For the audio synthesis model, we implement a variant of WaveNet that requires fewer parameters and trains faster than the original. By using a neural network for each component, our system is simpler and more flexible than traditional text-to-speech systems, where each component requires laborious feature engineering and extensive domain expertise. Finally, we show that inference with our system can be performed faster than real time and describe optimized WaveNet inference kernels on both CPU and GPU that achieve up to 400x speedups over existing implementations.

Code Implementations3 repos
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