SASE : Self-Adaptive noise distribution network for Speech Enhancement with heterogeneous data of Cross-Silo Federated learning

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Text Data & NLP SASE
Overview

SASE : Self-Adaptive noise distribution network for Speech Enhancement with heterogeneous data of Cross-Silo Federated learning

  • We propose a SASE model with adaptive noise distribution, which achieves state of the art results on the VioceBank+DEMAND dataset.
  • We simulated the federated learning setting of a real environment and verified the robustness of the proposed SASE noise reduction model in a real environment through experiments and visualization.
  • The proposed SASE model is computed based on the complex domain, and the TF-GA block is used to extract richer information of speech distribution and noise distribution, while SA-GOEA and SA-GUEA are adaptive to learn the distribution mask of noise.
  • In this paper, we propose a model aggregation optimization weighting strategy that is more applicable to FLbased speech enhancement tasks.

Dependencies

  • python >=3.6 (3.8.5 was used in the experiments)
  • PyTorch == 1.10.0+cu113
  • flwr == 2.0.1

How to run the code

1. Prepare data

2. Train on the VoiceBank+DEMAND dataset

  • python main.py

3. Train on the CommonVoice(Chinese)+Noise92 dataset with Federated learning

  • ./run-server.sh
  • ./run-client.sh
    • You can change the number of clients by changing NUM_CLIENTS

4. Generate wav files and evaluate

  • python main.py -g --resume "model_file" -df "wavs_root"

Result

1. Evaluate on VoiceBank+DEMAND dataset

image-20211117140018001

2. Evaluate on CommonVoice+Noise92 dataset

image-20211117140035056

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