Introduction
The MossFormer2_SE_48K model weights for 48 kHz speech enhancement in ClearerVoice-Studio repo.
This model is trained on large scale datasets inclduing open-sourced and private data.
It enhances speech audios by removing background noise.
Install
Clone the Repository
git clone https://github.com/modelscope/ClearerVoice-Studio.git
Create Conda Environment
cd ClearerVoice-Studio
conda create -n clearvoice python=3.8
conda activate clearvoice
pip install -r requirements.txt
Run Script
Go to clearvoice/
and use the following examples. The MossFormer2_SE_48K model will be downloaded from huggingface automatically.
Sample example 1: use speech enhancement model MossFormer2_SE_48K
to process one wave file of samples/input.wav
and save the output wave file to samples/output_MossFormer2_SE_48K.wav
from clearvoice import ClearVoice
myClearVoice = ClearVoice(task='speech_enhancement', model_names=['MossFormer2_SE_48K'])
output_wav = myClearVoice(input_path='samples/input.wav', online_write=False)
myClearVoice.write(output_wav, output_path='samples/output_MossFormer2_SE_48K.wav')
Sample example 2: use speech enhancement model MossFormer2_SE_48K
to process all input wave files in samples/path_to_input_wavs/
and save all output files to samples/path_to_output_wavs
from clearvoice import ClearVoice
myClearVoice = ClearVoice(task='speech_enhancement', model_names=['MossFormer2_SE_48K'])
myClearVoice(input_path='samples/path_to_input_wavs', online_write=True, output_path='samples/path_to_output_wavs')
Sample example 3: use speech enhancement model MossFormer2_SE_48K
to process wave files listed in `samples/audio_samples.scp' file, and save all output files to 'samples/path_to_output_wavs_scp/'
from clearvoice import ClearVoice
myClearVoice = ClearVoice(task='speech_enhancement', model_names=['MossFormer2_SE_48K'])
myClearVoice(input_path='samples/scp/audio_samples.scp', online_write=True, output_path='samples/path_to_output_wavs_scp')