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---
language:
- en
pretty_name: MoisesDB
tags:
- audio
- music
- source separation
license: other
license_name: cc-by-nc-sa-4.0
license_link: https://creativecommons.org/licenses/by-nc-sa/4.0/
---
# MoisesDB
Moises Dataset for Source Separation
### Dataset Description
- **Homepage:** [MoisesDB homepage](https://developer.moises.ai/research/)
- **Repository:** [MoisesDB repository](https://github.com/moises-ai/moises-db)
- **Paper:** [Moisesdb: A dataset for source separation beyond 4-stems](https://arxiv.org/abs/2307.15913)
- **Point of Contact:** [Igor Pereira](mailto:[email protected])
### Dataset Summary
MoisesDB is a dataset for source separation. It provides a collection of tracks and their separated stems (vocals, bass, drums, etc.). The dataset is used to evaluate the performance of source separation algorithms.
# Download the data
Please download the dataset at our research [website](https://developer.moises.ai/research), extract it and configure the environment variable `MOISESDB_PATH` accordingly.
```
export MOISESDB_PATH=./moises-db-data
```
The directory structure should be
```
moisesdb:
moisesdb_v0.1
track uuid 0
track uuid 1
.
.
.
```
# Install
You can install this package with
```
pip install git+https://github.com/moises-ai/moises-db.git
```
# Usage
## `MoisesDB`
After downloading and configuring the path for the dataset, you can create an instance of `MoisesDB` to access the tracks. You can also provide the dataset path with the `data_path` argument.
```
from moisesdb.dataset import MoisesDB
db = MoisesDB(
data_path='./moisesdb',
sample_rate=44100
)
```
The `MoisesDB` object has iterator properties that you can use to access all files within the dataset.
```
n_songs = len(db)
track = db[0] # Returns a MoisesDBTrack object
```
## `MoisesDBTrack`
The `MoisesDBTrack` object holds information about a track in the dataset, perform on-the-fly mixing for stems and multiple sources within a stem.
You can access all the stems and mixture from the `stem` and `audio` properties. The `stem` property returns a dictionary whith available stems as keys and `nd.array` on values. The `audio` property results in a `nd.array` with the mixture.
```
track = db[0]
stems = track.stems # stems = {'vocals': ..., 'bass': ..., ...}
mixture track.audio # mixture = nd.array
```
The `MoisesDBTrack` object also contains other non-audio information from the track such as:
- `track.id`
- `track.provider`
- `track.artist`
- `track.name`
- `track.genre`
- `track.sources`
- `track.bleedings`
- `track.activity`
The stems and mixture are computed on-the-fly. You can create a stems-only version of the dataset using the `save_stems` method of the `MoisesDBTrack`.
```
track = db[0]
path = './moises-db-stems/0'
track.save_stems(path)
```
# Performance Evaluation
We run a few source separation algorithms as well as oracle methods to evaluate the performance of each track of the `MoisesDB`. These results are located in `csv` files at the `benchmark` folder.
# Citing
If you used the `MoisesDB` dataset on your research, please cite the following paper.
```
@misc{pereira2023moisesdb,
title={Moisesdb: A dataset for source separation beyond 4-stems},
author={Igor Pereira and Felipe Araújo and Filip Korzeniowski and Richard Vogl},
year={2023},
eprint={2307.15913},
archivePrefix={arXiv},
primaryClass={cs.SD}
}
```
# Licensing
`MoisesDB` is distributed under the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License (CC BY-NC-SA 4.0).
For the complete license terms, please visit: https://creativecommons.org/licenses/by-nc-sa/4.0/
See [LICENSE](LICENSE) file for details.