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Investigating Self-supervised Pretraining Frameworks for Pathological
  Speech Recognition

Investigating Self-supervised Pretraining Frameworks for Pathological Speech Recognition

29 March 2022
Lester Phillip Violeta
Wen-Chin Huang
T. Toda
ArXivPDFHTML

Papers citing "Investigating Self-supervised Pretraining Frameworks for Pathological Speech Recognition"

6 / 6 papers shown
Title
CDSD: Chinese Dysarthria Speech Database
CDSD: Chinese Dysarthria Speech Database
Mengyi Sun
Ming Gao
Xinchen Kang
Shiru Wang
Jun Du
Dengfeng Yao
Su-Jing Wang
25
3
0
24 Oct 2023
Speaker Embeddings as Individuality Proxy for Voice Stress Detection
Speaker Embeddings as Individuality Proxy for Voice Stress Detection
Zihan Wu
Neil Scheidwasser
Karl El Hajal
Milos Cernak
24
3
0
09 Jun 2023
Exploration of Language Dependency for Japanese Self-Supervised Speech
  Representation Models
Exploration of Language Dependency for Japanese Self-Supervised Speech Representation Models
Takanori Ashihara
Takafumi Moriya
Kohei Matsuura
Tomohiro Tanaka
14
3
0
09 May 2023
Intermediate Fine-Tuning Using Imperfect Synthetic Speech for Improving
  Electrolaryngeal Speech Recognition
Intermediate Fine-Tuning Using Imperfect Synthetic Speech for Improving Electrolaryngeal Speech Recognition
Lester Phillip Violeta
D. Ma
Wen-Chin Huang
T. Toda
19
7
0
02 Nov 2022
Two-stage training method for Japanese electrolaryngeal speech
  enhancement based on sequence-to-sequence voice conversion
Two-stage training method for Japanese electrolaryngeal speech enhancement based on sequence-to-sequence voice conversion
D. Ma
Lester Phillip Violeta
Kazuhiro Kobayashi
T. Toda
13
6
0
19 Oct 2022
Multi-task self-supervised learning for Robust Speech Recognition
Multi-task self-supervised learning for Robust Speech Recognition
Mirco Ravanelli
Jianyuan Zhong
Santiago Pascual
P. Swietojanski
João Monteiro
J. Trmal
Yoshua Bengio
SSL
171
288
0
25 Jan 2020
1