forked from mrq/DL-Art-School
105 lines
4.0 KiB
Python
105 lines
4.0 KiB
Python
import os.path as osp
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import logging
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import random
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import argparse
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import audio2numpy
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from munch import munchify
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import utils
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import utils.options as option
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import utils.util as util
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from data.audio.nv_tacotron_dataset import save_mel_buffer_to_file
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from models.audio.tts.tacotron2 import hparams
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from models.audio.tts.tacotron2 import TacotronSTFT
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from models.audio.tts.tacotron2 import sequence_to_text
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from scripts.audio.use_vocoder import Vocoder
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from trainer.ExtensibleTrainer import ExtensibleTrainer
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import torch
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import numpy as np
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from scipy.io import wavfile
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def forward_pass(model, data, output_dir, opt, b):
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with torch.no_grad():
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model.feed_data(data, 0)
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model.test()
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if 'real_text' in opt['eval'].keys():
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real = data[opt['eval']['real_text']][0]
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print(f'{b} Real text: "{real}"')
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pred_seq = model.eval_state[opt['eval']['gen_text']][0]
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pred_text = [sequence_to_text(ts) for ts in pred_seq]
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audio = model.eval_state[opt['eval']['audio']][0].cpu().numpy()
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wavfile.write(osp.join(output_dir, f'{b}_clip.wav'), 22050, audio)
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for i, text in enumerate(pred_text):
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print(f'{b} Predicted text {i}: "{text}"')
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if __name__ == "__main__":
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input_file = "E:\\audio\\books\\Roald Dahl Audiobooks\\Roald Dahl - The BFG\\(Roald Dahl) The BFG - 07.mp3"
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config = "../options/train_gpt_stop_libritts.yml"
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cutoff_pred_percent = .2
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# Set seeds
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torch.manual_seed(5555)
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random.seed(5555)
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np.random.seed(5555)
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#### options
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torch.backends.cudnn.benchmark = True
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want_metrics = False
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parser = argparse.ArgumentParser()
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parser.add_argument('-opt', type=str, help='Path to options YAML file.', default=config)
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opt = option.parse(parser.parse_args().opt, is_train=False)
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opt = option.dict_to_nonedict(opt)
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utils.util.loaded_options = opt
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hp = munchify(hparams.create_hparams())
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util.mkdirs(
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(path for key, path in opt['path'].items()
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if not key == 'experiments_root' and 'pretrain_model' not in key and 'resume' not in key))
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util.setup_logger('base', opt['path']['log'], 'test_' + opt['name'], level=logging.INFO,
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screen=True, tofile=True)
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logger = logging.getLogger('base')
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logger.info(option.dict2str(opt))
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model = ExtensibleTrainer(opt)
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assert len(model.networks) == 1
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model = model.networks[next(iter(model.networks.keys()))].module.to('cuda')
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model.eval()
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vocoder = Vocoder()
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audio, sr = audio2numpy.audio_from_file(input_file)
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if len(audio.shape) == 2:
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audio = audio[:, 0]
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audio = torch.tensor(audio, device='cuda').unsqueeze(0).unsqueeze(0)
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audio = torch.nn.functional.interpolate(audio, scale_factor=hp.sampling_rate/sr, mode='nearest').squeeze(1)
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stft = TacotronSTFT(hp.filter_length, hp.hop_length, hp.win_length, hp.n_mel_channels, hp.sampling_rate, hp.mel_fmin, hp.mel_fmax).to('cuda')
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mels = stft.mel_spectrogram(audio)
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with torch.no_grad():
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sentence_number = 0
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last_detection_start = 0
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start = 0
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clip_size = model.max_mel_frames
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while start+clip_size < mels.shape[-1]:
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clip = mels[:, :, start:start+clip_size]
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pred_starts, pred_ends = model(clip)
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pred_ends = torch.nn.functional.sigmoid(pred_ends).squeeze(-1).squeeze(0) # Squeeze off the batch and sigmoid dimensions, leaving only the sequence dimension.
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indices = torch.nonzero(pred_ends > cutoff_pred_percent)
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for i in indices:
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i = i.item()
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sentence = mels[0, :, last_detection_start:start+i]
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if sentence.shape[-1] > 400 and sentence.shape[-1] < 1600:
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save_mel_buffer_to_file(sentence, f'{sentence_number}.npy')
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wav = vocoder.transform_mel_to_audio(sentence)
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wavfile.write(f'{sentence_number}.wav', 22050, wav[0].cpu().numpy())
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sentence_number += 1
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last_detection_start = start+i
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start += 4
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if last_detection_start > start:
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start = last_detection_start
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