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Colab adaptation of MVSep Model for MDX23 music separation contest

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MVSEP-MDX23-Colab fork v2.2.1

Adaptation of MVSep-MDX23 algorithm for Colab, with few tweaks:

v2.2.1

  • Added custom weights feature
  • Fixed some bugs
  • Fixed input: you can use a file or a folder as input now

v2.2

  • Added MDXv3 compatibility
  • Added MDXv3 demo model D1581 in vocals stem multiband ensemble
  • Added MDX-VOC-FT Fullband SRS in vocals stem multiband ensemble
  • Added option to output only vocals/instrum stems (faster processing)
  • Added 16bit output format option
  • Added "BigShift trick" for MDX models
  • Added separated overlap values for MDX, MDXv3 and Demucs
  • Fixed volume compensations fine-tuned
  • Fixed some memory issues

v2.1 (by deton24)

  • Updated with MDX-VOC-FT instead of Kim Vocal 2

v2.0

  • Updated with new Kim Vocal 2 & UVR-MDX-Instr-HQ3 models
  • Folder batch processing
  • Fixed high frequency bleed in vocals
  • Fixed volume compensation for MDX models

https://colab.research.google.com/github/jarredou/MVSEP-MDX23-Colab_v2/blob/v2.2/MVSep-MDX23-Colab.ipynb


Original work =>

MVSEP-MDX23-music-separation-model

Model for Sound demixing challenge 2023: Music Demixing Track - MDX'23. Model perform separation of music into 4 stems "bass", "drums", "vocals", "other". Model won 3rd place in challenge (Leaderboard C).

Model based on Demucs4, MDX neural net architectures and some MDX weights from Ultimate Vocal Remover project (thanks Kimberley Jensen for great high quality vocal models). Brought to you by MVSep.com.

Usage

    python inference.py --input_audio mixture1.wav mixture2.wav --output_folder ./results/

With this command audios with names "mixture1.wav" and "mixture2.wav" will be processed and results will be stored in ./results/ folder in WAV format.

  • Note 1: If you have not enough GPU memory you can use CPU (--cpu), but it will be slow. Additionally you can use single ONNX (--single_onnx), but it will decrease quality a little bit. Also reduce of chunk size can help (--chunk_size 200000).
  • Note 2: In current revision code requires less GPU memory, but it process multiple files slower. If you want old fast method use argument --large_gpu. It will require > 11 GB of GPU memory, but will work faster.

Quality comparison

Quality comparison with best separation models performed on MultiSong Dataset.

Algorithm SDR bass SDR drums SDR other SDR vocals SDR instrumental
MVSEP MDX23 12.5034 11.6870 6.5378 9.5138 15.8213
Demucs HT 4 12.1006 11.3037 5.7728 8.3555 13.9902
Demucs 3 10.6947 10.2744 5.3580 8.1335 14.4409
MDX B --- ---- --- 8.5118 14.8192
  • Note: SDR - signal to distortion ratio. Larger is better.

GUI

GUI Window

  • Script for GUI (based on PyQt5): gui.py.
  • You can download standalone program for Windows here: zip1, zip2. Unzip archives and to start program double click run.bat.
  • Program will download all needed neural net models from internet at the first run.
  • GUI supports Drag & Drop of multiple files.
  • Progress bar available.

Citation

@misc{solovyev2023benchmarks,
      title={Benchmarks and leaderboards for sound demixing tasks}, 
      author={Roman Solovyev and Alexander Stempkovskiy and Tatiana Habruseva},
      year={2023},
      eprint={2305.07489},
      archivePrefix={arXiv},
      primaryClass={cs.SD}
}

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Colab adaptation of MVSep Model for MDX23 music separation contest

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