subtify / separe.py
Maximofn's picture
Change output folder to vocals into separe.py
7523de3
raw
history blame
3.5 kB
from modelscope.pipelines import pipeline
from modelscope.utils.constant import Tasks
import soundfile as sf
import numpy as np
import os
import torch
import argparse
SAMPLE_RATE = 8000
def get_sample_rate(audio_file_path):
"""
Get the sample rate of an audio file
Args:
audio_file_path (str): Path to the audio file
Returns:
int: Sample rate of the audio file
"""
_, sample_rate = sf.read(audio_file_path, always_2d=True)
return sample_rate
def change_sample_rate(input_audio_file_path, output_audio_file_path, sample_rate):
"""
Change the sample rate of an audio file
Args:
input_audio_file_path (str): Path to the input audio file
output_audio_file_path (str): Path to the output audio file
sample_rate (int): Sample rate to change to
"""
os.system(f'ffmpeg -i {input_audio_file_path} -ar {sample_rate} {output_audio_file_path}')
def audio_is_stereo(audio_file_path):
"""
Check if an audio file is stereo
Args:
audio_file_path (str): Path to the audio file
Returns:
bool: True if the audio file is stereo, False otherwise
"""
audio, _ = sf.read(audio_file_path, always_2d=True)
return audio.shape[1] == 2
def set_mono(input_audio_file_path, output_audio_file_path):
"""
Set an audio file to mono
Args:
input_audio_file_path (str): Path to the input audio file
output_audio_file_path (str): Path to the output audio file
"""
os.system(f'ffmpeg -i {input_audio_file_path} -ac 1 {output_audio_file_path}')
def main(args):
# Get input and output files
input = args.input
output = args.input
# Get input and output names
input_name = input.split(".")[0]
output_name = output.split(".")[0]
# Get folder of output file
input_folder = input_name.split("/")[0]
output_folder = "vocals"
input_file_name = input_name.split("/")[1]
output_file_name = output_name.split("/")[1]
# Set input files with 8k sample rate and mono
input_8k = f"{input_name}_8k.wav"
input_8k_mono = f"{input_name}_8k_mono.wav"
# Check if input has 8k sample rate, if not, change it
sr = get_sample_rate(input)
if sr != SAMPLE_RATE:
change_sample_rate(input, input_8k, SAMPLE_RATE)
remove_8k = True
else:
input_8k = input
remove_8k = False
# Check if input is stereo, if yes, set it to mono
if audio_is_stereo(input_8k):
set_mono(input_8k, input_8k_mono)
remove_mono = True
else:
input_8k_mono = input_8k
remove_mono = False
# Separate audio voices
device = 'cuda' if torch.cuda.is_available() else 'cpu'
separation = pipeline(Tasks.speech_separation, model='damo/speech_mossformer_separation_temporal_8k', device=device)
result = separation(input_8k_mono)
# Save separated audio voices
for i, signal in enumerate(result['output_pcm_list']):
save_file = f'{output_folder}/{output_file_name}_speaker{i:003d}.wav'
sf.write(save_file, np.frombuffer(signal, dtype=np.int16), SAMPLE_RATE)
# Remove temporary files
if remove_8k:
os.remove(input_8k)
if remove_mono:
os.remove(input_8k_mono)
if __name__ == '__main__':
argparser = argparse.ArgumentParser(description='Separate speech from a stereo audio file')
argparser.add_argument('input', type=str, help='Input audio file')
args = argparser.parse_args()
main(args)