模型:
cankeles/ConvTasNet_WHAMR_enhsingle_16k
任务:
音频到音频许可:
cc-by-sa-4.0Description:
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