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Multi-voice singing voice synthesis

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WGANSing: A Multi-Voice Singing Voice Synthesizer Based on the Wasserstein-GAN

Pritish Chandna, Merlijn Blaauw, Jordi Bonada, Emilia Gómez

Music Technology Group, Universitat Pompeu Fabra, Barcelona

This repository contains the source code for multi-voice singing voice synthesis

Installation

To install, clone the repository and use
pip install -r requirements.txt 
to install the packages required.

The main code is in the main.py file.

Training and inference

To use the WGANSing, you will have to download the model weights and place it in the log_dir directory, defined in config.py.

The NUS-48E dataset can be downloaded from here. Once downloaded, please change wav_dir_nus in config.py to the same directory that the dataset is in.

To prepare the data for use, please use prep_data_nus.py.

Once setup, you can run the following commands. To train the model:

python main.py -t
.

To synthesize a .lab file: Use

python main.py -e filename alternate_singer_name 

If no alternate singer is given then the original singer will be used for synthesis. A list of valid singer names will be displayed if an invalid singer is entered.

You will also be prompted on wether plots showed be displayed or not, press y or Y to view plots.

Acknowledgments

The TITANX used for this research was donated by the NVIDIA Corporation. This work is partially supported by the Towards Richer Online Music Public-domain Archives (TROMPA) (H2020 770376) European project.

[1] Duan, Zhiyan, et al. "The NUS sung and spoken lyrics corpus: A quantitative comparison of singing and speech." 2013 Asia-Pacific Signal and Information Processing Association Annual Summit and Conference. IEEE, 2013.

[2] Blaauw, Merlijn, and Jordi Bonada. "A Neural Parametric Singing Synthesizer Modeling Timbre and Expression from Natural Songs." Applied Sciences 7.12 (2017): 1313.

[3] Blaauw, Merlijn, et al. “Data efficient voice cloning forneural singing synthesis,” in2019 IEEE International Conference onAcoustics, Speech and Signal Processing (ICASSP), 2019.

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