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Modeling Multi-speaker Latent Space to Improve Neural TTS: Quick
  Enrolling New Speaker and Enhancing Premium Voice

Modeling Multi-speaker Latent Space to Improve Neural TTS: Quick Enrolling New Speaker and Enhancing Premium Voice

13 December 2018
Yan Deng
Lei He
Frank Soong
ArXivPDFHTML

Papers citing "Modeling Multi-speaker Latent Space to Improve Neural TTS: Quick Enrolling New Speaker and Enhancing Premium Voice"

3 / 3 papers shown
Title
Speaker Adaption with Intuitive Prosodic Features for Statistical
  Parametric Speech Synthesis
Speaker Adaption with Intuitive Prosodic Features for Statistical Parametric Speech Synthesis
Pengyu Cheng
Zhenhua Ling
9
3
0
02 Mar 2022
Attentron: Few-Shot Text-to-Speech Utilizing Attention-Based
  Variable-Length Embedding
Attentron: Few-Shot Text-to-Speech Utilizing Attention-Based Variable-Length Embedding
Seungwoo Choi
Seungju Han
Dongyoung Kim
S. Ha
17
64
0
18 May 2020
Transfer Learning from Speaker Verification to Multispeaker
  Text-To-Speech Synthesis
Transfer Learning from Speaker Verification to Multispeaker Text-To-Speech Synthesis
Ye Jia
Yu Zhang
Ron J. Weiss
Quan Wang
Jonathan Shen
...
Z. Chen
Patrick Nguyen
Ruoming Pang
Ignacio López Moreno
Yonghui Wu
201
819
0
12 Jun 2018
1