Official implementation of MLP Singer: Towards Rapid Parallel Korean Singing Voice Synthesis

Overview

MLP Singer

Official implementation of MLP Singer: Towards Rapid Parallel Korean Singing Voice Synthesis. Audio samples are available on our demo page.

Abstract

Recent developments in deep learning have significantly improved the quality of synthesized singing voice audio. However, prominent neural singing voice synthesis systems suffer from slow inference speed due to their autoregressive design. Inspired by MLP-Mixer, a novel architecture introduced in the vision literature for attention-free image classification, we propose MLP Singer, a parallel Korean singing voice synthesis system. To the best of our knowledge, this is the first work that uses an entirely MLP-based architecture for voice synthesis. Listening tests demonstrate that MLP Singer outperforms a larger autoregressive GAN-based system, both in terms of audio quality and synthesis speed. In particular, MLP Singer achieves a real-time factor of up to 200 and 3400 on CPUs and GPUs respectively, enabling order of magnitude faster generation on both environments.

Citation

Please cite this work as follows.

@misc{tae2021mlp,
      title={MLP Singer: Towards Rapid Parallel Korean Singing Voice Synthesis}, 
      author={Jaesung Tae and Hyeongju Kim and Younggun Lee},
      year={2021},
}

Quickstart

  1. Clone the repository including the git submodule.

    git clone --recurse-submodules https://github.com/neosapience/mlp-singer.git
  2. Install package requirements.

cd mlp-singer
pip install -r requirements.txt
  1. To generate audio files with the trained model checkpoint, download the HiFi-GAN checkpoint along with its configuration file and place them in hifi-gan.

  2. Run inference using the following command. Generated audio samples are saved in the samples directory by default.

    python inference.py --checkpoint_path checkpoints/default/model.pt

Dataset

We used the Children Song Dataset, an open-source singing voice dataset comprised of 100 annotated Korean and English children songs sung by a single professional singer. We used only the Korean subset of the dataset to train the model.

You can train the model on any custom dataset of your choice, as long as it includes lyrics text, midi transcriptions, and monophonic a capella audio file triplets. These files should be titled identically, and should also be placed in specific directory locations as shown below.

├── data
│   └── raw
│       ├── mid
│       ├── txt
│       └── wav

The directory names correspond to file extensions. We have included a sample as reference.

Preprocessing

Once you have prepared the dataset, run

python -m data.serialize

from the root directory. This will create data/bin that contains binary files used for training. This repository already contains example binary files created from the sample in data/raw.

Training

To train the model, run

python train.py

This will read the default configuration file located in configs/model.json to initialize the model. Alternatively, you can also create a new configuration and train the model via

python train.py --config_path PATH/TO/CONFIG.json

Running this command will create a folder under the checkpoints directory according to the name field specified in the configuration file.

You can also continue training from a checkpoint. For example, to resume training from the provided pretrained model checkpoint, run

python train.py --checkpoint_path /checkpoints/default/model.pt

Unless a --config_path flag is explicitly provided, the script will read config.json in the checkpoint directory. In both cases, model checkpoints will be saved regularly according to the interval defined in the configuration file.

Inference

MLP Singer produces mel-spectrograms, which are then fed into a neural vocoder to generate raw waveforms. This repository uses HiFi-GAN as the vocoder backend, but you can also plug other vocoders like WaveGlow. To generate samples, run

python inference.py --checkpoint_path PATH/TO/CHECKPOINT.pt --song little_star

This will create .wav samples in the samples directory, and save mel-spectrogram files as .npy files in hifi-gan/test_mel_dirs.

You can also specify any song you want to perform inference on, as long as the song is present in data/raw. The argument to the --song flag should match the title of the song as it is saved in data/raw.

Note

For demo and internal experiments, we used a variant of HiFi-GAN that used different mel-spectrogram configurations. As such, the provided checkpoint for MLP Singer is different from the one referred to in the paper. Moreover, the vocoder used in the demo was further fine-tuned on the Children's Song Dataset.

Acknowledgements

This implementation was inspired by the following repositories.

License

Released under the MIT License.

Owner
Neosapience
Neosapience, an artificial being enabled by artificial intelligence, will soon be everywhere in our daily lives.
Neosapience
FastFormers - highly efficient transformer models for NLU

FastFormers FastFormers provides a set of recipes and methods to achieve highly efficient inference of Transformer models for Natural Language Underst

Microsoft 678 Jan 05, 2023
MHtyper is an end-to-end pipeline for recognized the Forensic microhaplotypes in Nanopore sequencing data.

MHtyper is an end-to-end pipeline for recognized the Forensic microhaplotypes in Nanopore sequencing data. It is implemented using Python.

willow 6 Jun 27, 2022
A Practitioner's Guide to Natural Language Processing

Learn how to process, classify, cluster, summarize, understand syntax, semantics and sentiment of text data with the power of Python! This repository contains code and datasets used in my book, Text

Dipanjan (DJ) Sarkar 1.5k Jan 03, 2023
Code for EMNLP20 paper: "ProphetNet: Predicting Future N-gram for Sequence-to-Sequence Pre-training"

ProphetNet-X This repo provides the code for reproducing the experiments in ProphetNet. In the paper, we propose a new pre-trained language model call

Microsoft 394 Dec 17, 2022
A Transformer Implementation that is easy to understand and customizable.

Simple Transformer I've written a series of articles on the transformer architecture and language models on Medium. This repository contains an implem

Naoki Shibuya 4 Jan 20, 2022
SHAS: Approaching optimal Segmentation for End-to-End Speech Translation

SHAS: Approaching optimal Segmentation for End-to-End Speech Translation In this repo you can find the code of the Supervised Hybrid Audio Segmentatio

Machine Translation @ UPC 21 Dec 20, 2022
Tutorial to pretrain & fine-tune a 🤗 Flax T5 model on a TPUv3-8 with GCP

Pretrain and Fine-tune a T5 model with Flax on GCP This tutorial details how pretrain and fine-tune a FlaxT5 model from HuggingFace using a TPU VM ava

Gabriele Sarti 41 Nov 18, 2022
Generate vector graphics from a textual caption

VectorAscent: Generate vector graphics from a textual description Example "a painting of an evergreen tree" python text_to_painting.py --prompt "a pai

Ajay Jain 97 Dec 15, 2022
Simple program that translates the name of files into English

Simple program that translates the name of files into English. Useful for when editing/inspecting programs that were developed in a foreign language.

0 Dec 22, 2021
The RWKV Language Model

RWKV-LM We propose the RWKV language model, with alternating time-mix and channel-mix layers: The R, K, V are generated by linear transforms of input,

PENG Bo 877 Jan 05, 2023
A Fast Command Analyser based on Dict and Pydantic

Alconna Alconna 隶属于ArcletProject, 在Cesloi内有内置 Alconna 是 Cesloi-CommandAnalysis 的高级版,支持解析消息链 一般情况下请当作简易的消息链解析器/命令解析器 文档 暂时的文档 Example from arclet.alcon

19 Jan 03, 2023
☀️ Measuring the accuracy of BBC weather forecasts in Honolulu, USA

Accuracy of BBC Weather forecasts for Honolulu This repository records the forecasts made by BBC Weather for the city of Honolulu, USA. Essentially, t

Max Halford 12 Oct 15, 2022
Create a machine learning model which will predict if the mortgage will be approved or not based on 5 variables

Mortgage-Application-Analysis Create a machine learning model which will predict if the mortgage will be approved or not based on 5 variables: age, in

1 Jan 29, 2022
A multi-voice TTS system trained with an emphasis on quality

TorToiSe Tortoise is a text-to-speech program built with the following priorities: Strong multi-voice capabilities. Highly realistic prosody and inton

James Betker 2.1k Jan 01, 2023
Just a Basic like Language for Zeno INC

zeno-basic-language Just a Basic like Language for Zeno INC This is written in 100% python. this is basic language like language. so its not for big p

Voidy Devleoper 1 Dec 18, 2021
ASCEND Chinese-English code-switching dataset

ASCEND (A Spontaneous Chinese-English Dataset) introduces a high-quality resource of spontaneous multi-turn conversational dialogue Chinese-English code-switching corpus collected in Hong Kong.

CAiRE 11 Dec 09, 2022
Toy example of an applied ML pipeline for me to experiment with MLOps tools.

Toy Machine Learning Pipeline Table of Contents About Getting Started ML task description and evaluation procedure Dataset description Repository stru

Shreya Shankar 190 Dec 21, 2022
nlpcommon is a python Open Source Toolkit for text classification.

nlpcommon nlpcommon, Python Text Tool. Guide Feature Install Usage Dataset Contact Cite Reference Feature nlpcommon is a python Open Source

xuming 3 May 29, 2022
Pytorch implementation of winner from VQA Chllange Workshop in CVPR'17

2017 VQA Challenge Winner (CVPR'17 Workshop) pytorch implementation of Tips and Tricks for Visual Question Answering: Learnings from the 2017 Challeng

Mark Dong 166 Dec 11, 2022