模型:
JunzheJosephZhu/MultiDecoderDPRNN
许可:
cc-by-sa-4.0Code: The code corresponding to this pretrained model can be found here .
Notebook: Colab Notebook with examples can be found here
Paper : "Multi-Decoder DPRNN: High Accuracy Source Counting and Separation", Junzhe Zhu, Raymond Yeh, Mark Hasegawa-Johnson. ICASSP(2021).
Summary: This model achieves SOTA on the problem of source separation with an unknown number of speakers. It uses multiple decoder heads(each tackling a distinct number of speakers), in addition to a classifier head that selects which decoder head to use.
This model was trained by Joseph Zhu using the wsj0-mix-var/Multi-Decoder-DPRNN recipe in Asteroid. It was trained on the sep_count task of the Wsj0MixVar dataset.
filterbank: n_filters: 64 kernel_size: 8 stride: 4 masknet: n_srcs: [2, 3, 4, 5] bn_chan: 128 hid_size: 128 chunk_size: 128 hop_size: 64 n_repeats: 8 mask_act: 'sigmoid' bidirectional: true dropout: 0 use_mulcat: false training: epochs: 200 batch_size: 2 num_workers: 2 half_lr: yes lr_decay: yes early_stop: yes gradient_clipping: 5 optim: optimizer: adam lr: 0.001 weight_decay: 0.00000 data: train_dir: "data/{}speakers/wav8k/min/tr" valid_dir: "data/{}speakers/wav8k/min/cv" task: sep_count sample_rate: 8000 seglen: 4.0 minlen: 2.0 loss: lambda: 0.05
'Accuracy': 0.9723333333333334, 'P-Si-SNR': 10.36027378628496
This work "MultiDecoderDPRNN" is a derivative of CSR-I (WSJ0) Complete by LDC , used under LDC User Agreement for Non-Members (Research only). "MultiDecoderDPRNN" is licensed under Attribution-ShareAlike 3.0 Unported by Joseph Zhu.