import argparse import torch import torchaudio from data.data_loader import load_audio, NoiseInjection parser = argparse.ArgumentParser() parser.add_argument('--input_path', default='input.wav', help='The input audio to inject noise into') parser.add_argument('--noise_path', default='noise.wav', help='The noise file to mix in') parser.add_argument('--output_path', default='output.wav', help='The noise file to mix in') parser.add_argument('--sample_rate', default=16000, help='Sample rate to save output as') parser.add_argument('--noise_level', type=float, default=1.0, help='The Signal to Noise ratio (higher means more noise)') args = parser.parse_args() noise_injector = NoiseInjection() data = load_audio(args.input_path) mixed_data = noise_injector.inject_noise_sample(data, args.noise_path, args.noise_level) mixed_data = torch.FloatTensor(mixed_data).unsqueeze(1) # Add channels dim torchaudio.save(args.output_path, mixed_data, args.sample_rate) print('Saved mixed file to %s' % args.output_path)