Edit model card

Asteroid model cankeles/ConvTasNet_WHAMR_enhsingle_16k

Description:

This model was fine tuned on a modified version of WHAMR! where the speakers were taken from audiobook recordings and reverb was added by Pedalboard, Spotify.

The initial model was taken from here: https://huggingface.co/JorisCos/ConvTasNet_Libri1Mix_enhsingle_16k

This model was trained by M. Can Keles using the WHAM recipe in Asteroid. It was trained on the enh_single task of the WHAM dataset.

Training config:

data:
  mode: min
  nondefault_nsrc: null
  sample_rate: 16000
  task: enh_single
  train_dir: wav16k/min/tr/
  valid_dir: wav16k/min/cv/
filterbank:
  kernel_size: 16
  n_filters: 512
  stride: 8
main_args:
  exp_dir: exp/tmp
  help: null
masknet:
  bn_chan: 128
  hid_chan: 512
  mask_act: relu
  n_blocks: 8
  n_repeats: 3
  n_src: 1
  skip_chan: 128
optim:
  lr: 0.001
  optimizer: adam
  weight_decay: 0.0
positional arguments: {}
training:
  batch_size: 2
  early_stop: true
  epochs: 10
  half_lr: true
  num_workers: 4

Results:

 'sar': 13.612368475881558,
 'sar_imp': 9.709316571584433,
 'sdr': 13.612368475881558,
 'sdr_imp': 9.709316571584433,
 'si_sdr': 12.978640274976373,
 'si_sdr_imp': 9.161273840297232,
 'sir': inf,
 'sir_imp': nan,
 'stoi': 0.9214516928197306,
 'stoi_imp': 0.11657488247668318
Downloads last month
21
Inference Examples
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social visibility and check back later, or deploy to Inference Endpoints (dedicated) instead.

Space using cankeles/ConvTasNet_WHAMR_enhsingle_16k 1