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Non-Parallel Sequence-to-Sequence Voice Conversion with Disentangled
  Linguistic and Speaker Representations

Non-Parallel Sequence-to-Sequence Voice Conversion with Disentangled Linguistic and Speaker Representations

25 June 2019
Jing-Xuan Zhang
Zhenhua Ling
Lirong Dai
ArXivPDFHTML

Papers citing "Non-Parallel Sequence-to-Sequence Voice Conversion with Disentangled Linguistic and Speaker Representations"

12 / 12 papers shown
Title
Daisy-TTS: Simulating Wider Spectrum of Emotions via Prosody Embedding
  Decomposition
Daisy-TTS: Simulating Wider Spectrum of Emotions via Prosody Embedding Decomposition
Rendi Chevi
Alham Fikri Aji
22
2
0
22 Feb 2024
EmoFake: An Initial Dataset for Emotion Fake Audio Detection
EmoFake: An Initial Dataset for Emotion Fake Audio Detection
Yan Zhao
Jiangyan Yi
J. Tao
Chenglong Wang
Xiaohui Zhang
Yongfeng Dong
18
9
0
10 Nov 2022
Non-Parallel Voice Conversion for ASR Augmentation
Non-Parallel Voice Conversion for ASR Augmentation
Gary Wang
Andrew Rosenberg
Bhuvana Ramabhadran
Fadi Biadsy
Yinghui Huang
Jesse Emond
P. M. Mengibar
13
2
0
15 Sep 2022
How Deep Are the Fakes? Focusing on Audio Deepfake: A Survey
How Deep Are the Fakes? Focusing on Audio Deepfake: A Survey
Zahra Khanjani
Gabrielle Watson
V. P Janeja
21
25
0
28 Nov 2021
Towards Universal Neural Vocoding with a Multi-band Excited WaveNet
Towards Universal Neural Vocoding with a Multi-band Excited WaveNet
Axel Roebel
F. Bous
19
2
0
07 Oct 2021
Limited Data Emotional Voice Conversion Leveraging Text-to-Speech:
  Two-stage Sequence-to-Sequence Training
Limited Data Emotional Voice Conversion Leveraging Text-to-Speech: Two-stage Sequence-to-Sequence Training
Kun Zhou
Berrak Sisman
Haizhou Li
10
27
0
31 Mar 2021
Optimizing voice conversion network with cycle consistency loss of
  speaker identity
Optimizing voice conversion network with cycle consistency loss of speaker identity
Hongqiang Du
Xiaohai Tian
Lei Xie
Haizhou Li
13
17
0
17 Nov 2020
Any-to-One Sequence-to-Sequence Voice Conversion using Self-Supervised
  Discrete Speech Representations
Any-to-One Sequence-to-Sequence Voice Conversion using Self-Supervised Discrete Speech Representations
Wen-Chin Huang
Yi-Chiao Wu
Tomoki Hayashi
T. Toda
BDL
33
37
0
23 Oct 2020
CycleGAN-VC3: Examining and Improving CycleGAN-VCs for Mel-spectrogram
  Conversion
CycleGAN-VC3: Examining and Improving CycleGAN-VCs for Mel-spectrogram Conversion
Takuhiro Kaneko
Hirokazu Kameoka
Kou Tanaka
Nobukatsu Hojo
21
78
0
22 Oct 2020
An Overview of Voice Conversion and its Challenges: From Statistical
  Modeling to Deep Learning
An Overview of Voice Conversion and its Challenges: From Statistical Modeling to Deep Learning
Berrak Sisman
Junichi Yamagishi
Simon King
Haizhou Li
BDL
18
316
0
09 Aug 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
204
819
0
12 Jun 2018
Effective Approaches to Attention-based Neural Machine Translation
Effective Approaches to Attention-based Neural Machine Translation
Thang Luong
Hieu H. Pham
Christopher D. Manning
214
7,923
0
17 Aug 2015
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