This code is an implementation for Singing TTS.

Overview

MLP Singer

This code is an implementation for Singing TTS. The algorithm is based on the following papers:

Tae, J., Kim, H., & Lee, Y. (2021). MLP Singer: Towards Rapid Parallel Korean Singing Voice Synthesis. arXiv preprint arXiv:2106.07886.
Tolstikhin, I., Houlsby, N., Kolesnikov, A., Beyer, L., Zhai, X., Unterthiner, T., ... & Dosovitskiy, A. (2021). Mlp-mixer: An all-mlp architecture for vision. arXiv preprint arXiv:2105.01601.

Structure

  • Structure is based on the MLP Singer.
  • I changed several hyper parameters and data type
    • One of mel or spectrogram is can be selected as a feature type.
    • Token type is changed from phoneme to grapheme.

Used dataset

Hyper parameters

Before proceeding, please set the pattern, inference, and checkpoint paths in Hyper_Parameters.yaml according to your environment.

  • Sound

    • Setting basic sound parameters.
  • Tokens

    • The number of Lyric token.
  • Max_Note

    • The highest note value for embedding.
  • Duration

    • Min duration is used at pattern generating only.
    • Max duration is decided the maximum time step of model. MLP mixer always use the maximum time step.
    • Equality set the strategy about syllable to grapheme.
      • When True, onset, nucleus, and coda have same length or ±1 difference.
      • When False, onset and coda have Consonant_Duration length, and nucleus has duration - 2 * Consonant_Duration.
  • Feature_Type

    • Setting the feature type (Mel or Spectrogram).
  • Encoder

    • Setting the encoder(embedding).
  • Mixer

    • Setting the MLP mixer.
  • Train

    • Setting the parameters of training.
  • Inference_Batch_Size

    • Setting the batch size when inference
  • Inference_Path

    • Setting the inference path
  • Checkpoint_Path

    • Setting the checkpoint path
  • Log_Path

    • Setting the tensorboard log path
  • Use_Mixed_Precision

    • Setting using mixed precision
  • Use_Multi_GPU

    • Setting using multi gpu
    • By the nvcc problem, Only linux supports this option.
    • If this is True, device parameter is also multiple like '0,1,2,3'.
    • And you have to change the training command also: please check multi_gpu.sh.
  • Device

    • Setting which GPU devices are used in multi-GPU enviornment.
    • Or, if using only CPU, please set '-1'. (But, I don't recommend while training.)

Generate pattern

  • Current version does not support any open source dataset.

Inference file path while training for verification.

  • Inference_for_Training
    • There are three examples for inference.
    • It is midi file based script.

Run

Command

Single GPU

python Train.py -hp  -s 
  • -hp

    • The hyper paramter file path
    • This is required.
  • -s

    • The resume step parameter.
    • Default is 0.
    • If value is 0, model try to search the latest checkpoint.

Multi GPU

CUDA_VISIBLE_DEVICES=0,1,2,3,4,5,6,7 OMP_NUM_THREADS=32 python -m torch.distributed.launch --nproc_per_node=8 Train.py --hyper_parameters Hyper_Parameters.yaml --port 54322
Owner
Heejo You
Main focus: Psycholinguistics / Mechine learning / Deep learning
Heejo You
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