In this paper, we present a voice conversion (VC) method that does not use any parallel data while training the model. VC is a technique where only speaker-specific information in source speech is converted while keeping the phonological information unchanged. Most of the existing VC methods rely on parallel data-pairs of speech data from the source and target speakers uttering the same sentences. However, the use of parallel data in training causes several problems: 1) the data used for the training are limited to the predefined sentences, 2) the trained model is only applied to the speaker pair used in the training, and 3) mismatches in alignment may occur. Although it is, thus, fairly preferable in VC not to use parallel data, a nonparal...
Abstract—A robust voice conversion function relies on a large amount of parallel training data, whic...
We propose voice conversion model from arbitrary source speaker to arbitrary target speaker with dis...
ICASPP2010: IEEE International Conference on Acoustics, Speech, and Signal Processing, March 14-19...
Abstract In this paper, we present a voice conversion (VC) method that does not use any parallel dat...
The objective of voice conversion methods is to modify the speech characteristics of a particular sp...
The objective of voice conversion algorithms is to modify the speech by a particular source speaker ...
Voice conversion (VC) transforms the speaking style of a source speaker to the speaking style of a t...
In this paper, we present a dictionary-based voice conversion (VC) approach that does not require pa...
In this paper, we present a nonparallel voice conversion (VC) approach that does not require paralle...
Many-to-many voice conversion with non-parallel training data has seen significant progress in recen...
International audienceMuch existing voice conversion (VC) systems are attractive owing to their high...
The objective of voice conversion techniques is to convert a source speaker's voice so that it sound...
Many research topics in speech processing face the same dif-ficult problem, how to create cheaply (o...
SSW6: 6th ISCA Speech Synthesis Workshop, August 22-24, 2007, Bonn, Germany.This paper describes a...
Kuhlmann M, Seebauer FM, Ebbers J, Wagner P, Haeb-Umbach R. Investigation into Target Speaking Rate ...
Abstract—A robust voice conversion function relies on a large amount of parallel training data, whic...
We propose voice conversion model from arbitrary source speaker to arbitrary target speaker with dis...
ICASPP2010: IEEE International Conference on Acoustics, Speech, and Signal Processing, March 14-19...
Abstract In this paper, we present a voice conversion (VC) method that does not use any parallel dat...
The objective of voice conversion methods is to modify the speech characteristics of a particular sp...
The objective of voice conversion algorithms is to modify the speech by a particular source speaker ...
Voice conversion (VC) transforms the speaking style of a source speaker to the speaking style of a t...
In this paper, we present a dictionary-based voice conversion (VC) approach that does not require pa...
In this paper, we present a nonparallel voice conversion (VC) approach that does not require paralle...
Many-to-many voice conversion with non-parallel training data has seen significant progress in recen...
International audienceMuch existing voice conversion (VC) systems are attractive owing to their high...
The objective of voice conversion techniques is to convert a source speaker's voice so that it sound...
Many research topics in speech processing face the same dif-ficult problem, how to create cheaply (o...
SSW6: 6th ISCA Speech Synthesis Workshop, August 22-24, 2007, Bonn, Germany.This paper describes a...
Kuhlmann M, Seebauer FM, Ebbers J, Wagner P, Haeb-Umbach R. Investigation into Target Speaking Rate ...
Abstract—A robust voice conversion function relies on a large amount of parallel training data, whic...
We propose voice conversion model from arbitrary source speaker to arbitrary target speaker with dis...
ICASPP2010: IEEE International Conference on Acoustics, Speech, and Signal Processing, March 14-19...