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# Music Mixing Style Transfer | |
This repository includes source code and pre-trained models of the work *Music Mixing Style Transfer: A Contrastive Learning Approach to Disentangle Audio Effects* by [Junghyun Koo](https://linkedin.com/in/junghyun-koo-525a31251), [Marco A. Martínez-Ramírez](https://m-marco.com/about/), [Wei-Hsiang Liao](https://jp.linkedin.com/in/wei-hsiang-liao-66283154), [Stefan Uhlich](https://scholar.google.de/citations?user=hja8ejYAAAAJ&hl=de), [Kyogu Lee](https://linkedin.com/in/kyogu-lee-7a93b611), and [Yuki Mitsufuji](https://www.yukimitsufuji.com/). | |
[![arXiv](https://img.shields.io/badge/arXiv-2211.02247-b31b1b.svg)](https://arxiv.org/abs/2211.02247) | |
[![Web](https://img.shields.io/badge/Web-Demo_Page-green.svg)](https://jhtonyKoo.github.io/MixingStyleTransfer/) | |
[![Supplementary](https://img.shields.io/badge/Supplementary-Materials-white.svg)](https://tinyurl.com/4math4pm) | |
## Pre-trained Models | |
| Model | Configuration | Training Dataset | | |
|-------------|-------------|-------------| | |
[FXencoder (Φ<sub>p.s.</sub>)](https://drive.google.com/file/d/1BFABsJRUVgJS5UE5iuM03dbfBjmI9LT5/view?usp=sharing) | Used *FX normalization* and *probability scheduling* techniques for training | Trained with [MUSDB18](https://sigsep.github.io/datasets/musdb.html) Dataset | |
[MixFXcloner](https://drive.google.com/file/d/1Qu8rD7HpTNA1gJUVp2IuaeU_Nue8-VA3/view?usp=sharing) | Mixing style converter trained with Φ<sub>p.s.</sub> | Trained with [MUSDB18](https://sigsep.github.io/datasets/musdb.html) Dataset | |
## Installation | |
``` | |
pip install -r "requirements.txt" | |
``` | |
# Inference | |
## Mixing Style Transfer | |
To run the inference code for <i>mixing style transfer</i>, | |
1. Download pre-trained models above and place them under the folder named 'weights' (default) | |
2. Prepare input and reference tracks under the folder named 'samples/style_transfer' (default) | |
Target files should be organized as follow: | |
``` | |
"path_to_data_directory"/"song_name_#1"/"input_file_name".wav | |
"path_to_data_directory"/"song_name_#1"/"reference_file_name".wav | |
... | |
"path_to_data_directory"/"song_name_#n"/"input_file_name".wav | |
"path_to_data_directory"/"song_name_#n"/"reference_file_name".wav | |
``` | |
3. Run 'inference/style_transfer.py' | |
``` | |
python inference/style_transfer.py \ | |
--ckpt_path_enc "path_to_checkpoint_of_FXencoder" \ | |
--ckpt_path_conv "path_to_checkpoint_of_MixFXcloner" \ | |
--target_dir "path_to_directory_containing_inference_samples" | |
``` | |
4. Outputs will be stored under the same folder to inference data directory (default) | |
*Note: The system accepts WAV files of stereo-channeled, 44.1kHZ, and 16-bit rate. We recommend to use audio samples that are not too loud: it's better for the system to transfer these samples by reducing the loudness of mixture-wise inputs (maintaining the overall balance of each instrument).* | |
## Interpolation With 2 Different Reference Tracks | |
Inference code for <interpolating> two reference tracks is almost the same as <i>mixing style transfer</i>. | |
1. Download pre-trained models above and place them under the folder named 'weights' (default) | |
2. Prepare input and 2 reference tracks under the folder named 'samples/style_transfer' (default) | |
Target files should be organized as follow: | |
``` | |
"path_to_data_directory"/"song_name_#1"/"input_track_name".wav | |
"path_to_data_directory"/"song_name_#1"/"reference_file_name".wav | |
"path_to_data_directory"/"song_name_#1"/"reference_file_name_2interpolate".wav | |
... | |
"path_to_data_directory"/"song_name_#n"/"input_track_name".wav | |
"path_to_data_directory"/"song_name_#n"/"reference_file_name".wav | |
"path_to_data_directory"/"song_name_#n"/"reference_file_name_2interpolate".wav | |
``` | |
3. Run 'inference/style_transfer.py' | |
``` | |
python inference/style_transfer.py \ | |
--ckpt_path_enc "path_to_checkpoint_of_FXencoder" \ | |
--ckpt_path_conv "path_to_checkpoint_of_MixFXcloner" \ | |
--target_dir "path_to_directory_containing_inference_samples" \ | |
--interpolation True \ | |
--interpolate_segments "number of segments to perform interpolation" | |
``` | |
4. Outputs will be stored under the same folder to inference data directory (default) | |
*Note: This example of interpolating 2 different reference tracks is not mentioned in the paper, but this example implies a potential for controllable style transfer using latent space.* | |
## Feature Extraction Using *FXencoder* | |
This inference code will extracts audio effects-related embeddings using our proposed <i>FXencoder</i>. This code will process all the .wav files under the target directory. | |
1. Download <i>FXencoder</i>'s pre-trained model above and place it under the folder named 'weights' (default)= | |
2. Run 'inference/style_transfer.py' | |
``` | |
python inference/feature_extraction.py \ | |
--ckpt_path_enc "path_to_checkpoint_of_FXencoder" \ | |
--target_dir "path_to_directory_containing_inference_samples" | |
``` | |
3. Outputs will be stored under the same folder to inference data directory (default) | |
# Implementation | |
All the details of our system implementation are under the folder "mixing_style_transfer". | |
<li><i>FXmanipulator</i></li> | |
  -> mixing_style_transfer/mixing_manipulator/ | |
<li>network architectures</li> | |
  -> mixing_style_transfer/networks/ | |
<li>configuration of each sub-networks</li> | |
  -> mixing_style_transfer/networks/configs.yaml | |
<li>data loader</li> | |
  -> mixing_style_transfer/data_loader/ | |
# Citation | |
Please consider citing the work upon usage. | |
``` | |
@article{koo2022music, | |
title={Music Mixing Style Transfer: A Contrastive Learning Approach to Disentangle Audio Effects}, | |
author={Koo, Junghyun and Martinez-Ramirez, Marco A and Liao, Wei-Hsiang and Uhlich, Stefan and Lee, Kyogu and Mitsufuji, Yuki}, | |
journal={arXiv preprint arXiv:2211.02247}, | |
year={2022} | |
} | |
``` | |