forked from mrq/DL-Art-School
136 lines
7.5 KiB
Python
136 lines
7.5 KiB
Python
import argparse
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import random
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import torch
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import torch.nn.functional as F
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import torchaudio
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import yaml
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from tokenizers import Tokenizer
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from data.audio.paired_voice_audio_dataset import CharacterTokenizer
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from data.audio.unsupervised_audio_dataset import load_audio
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from data.util import is_audio_file, find_files_of_type
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from models.tacotron2.text import text_to_sequence
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from scripts.audio.gen.speech_synthesis_utils import do_spectrogram_diffusion, \
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load_discrete_vocoder_diffuser, wav_to_mel
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from trainer.injectors.base_injectors import TorchMelSpectrogramInjector
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from utils.options import Loader
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from utils.util import load_model_from_config
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# Loads multiple conditioning files at random from a folder.
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def load_conditioning_candidates(path, num_conds, sample_rate=22050, cond_length=44100):
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candidates = find_files_of_type('img', path, qualifier=is_audio_file)[0]
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# Sample with replacement. This can get repeats, but more conveniently handles situations where there are not enough candidates.
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related_mels = []
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for k in range(num_conds):
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rel_clip = load_audio(candidates[k], sample_rate)
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gap = rel_clip.shape[-1] - cond_length
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if gap < 0:
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rel_clip = F.pad(rel_clip, pad=(0, abs(gap)))
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elif gap > 0:
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rand_start = random.randint(0, gap)
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rel_clip = rel_clip[:, rand_start:rand_start + cond_length]
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mel_clip = wav_to_mel(rel_clip.unsqueeze(0)).squeeze(0)
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related_mels.append(mel_clip)
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return torch.stack(related_mels, dim=0).unsqueeze(0).cuda(), rel_clip.unsqueeze(0).cuda()
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def load_conditioning(path, sample_rate=22050, cond_length=44100):
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rel_clip = load_audio(path, sample_rate)
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gap = rel_clip.shape[-1] - cond_length
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if gap < 0:
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rel_clip = F.pad(rel_clip, pad=(0, abs(gap)))
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elif gap > 0:
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rand_start = random.randint(0, gap)
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rel_clip = rel_clip[:, rand_start:rand_start + cond_length]
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mel_clip = wav_to_mel(rel_clip.unsqueeze(0)).squeeze(0)
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return mel_clip.unsqueeze(0).cuda(), rel_clip.unsqueeze(0).cuda()
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def fix_autoregressive_output(codes, stop_token):
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"""
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This function performs some padding on coded audio that fixes a mismatch issue between what the diffusion model was
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trained on and what the autoregressive code generator creates (which has no padding or end).
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This is highly specific to the DVAE being used, so this particular coding will not necessarily work if used with
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a different DVAE. This can be inferred by feeding a audio clip padded with lots of zeros on the end through the DVAE
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and copying out the last few codes.
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Failing to do this padding will produce speech with a harsh end that sounds like "BLAH" or similar.
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"""
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# Strip off the autoregressive stop token and add padding.
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stop_token_indices = (codes == stop_token).nonzero()
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if len(stop_token_indices) == 0:
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print("No stop tokens found, enjoy that output of yours!")
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else:
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codes = codes[:stop_token_indices[0]]
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padding = torch.tensor([83, 83, 83, 83, 83, 83, 83, 83, 83, 45, 45, 248],
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dtype=torch.long, device=codes.device)
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return torch.cat([codes, padding])
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if __name__ == '__main__':
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preselected_cond_voices = {
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'trump': 'D:\\data\\audio\\sample_voices\\trump.wav',
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'ryan_reynolds': 'D:\\data\\audio\\sample_voices\\ryan_reynolds.wav',
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'ed_sheeran': 'D:\\data\\audio\\sample_voices\\ed_sheeran.wav',
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'simmons': 'Y:\\clips\\books1\\754_Dan Simmons - The Rise Of Endymion 356 of 450\\00026.wav',
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'news_girl': 'Y:\\clips\\podcasts-0\\8288_20210113-Is More Violence Coming_\\00022.wav',
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'dan_carlin': 'Y:\\clips\\books1\5_dchha06 Shield of the West\\00476.wav',
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'libri_test': 'Z:\\bigasr_dataset\\libritts\\test-clean\\672\\122797\\672_122797_000057_000002.wav'
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}
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parser = argparse.ArgumentParser()
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parser.add_argument('-opt_diffuse', type=str, help='Path to options YAML file used to train the diffusion model', default='X:\\dlas\\experiments\\train_diffusion_vocoder_with_cond_new_dvae.yml')
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parser.add_argument('-diffusion_model_name', type=str, help='Name of the diffusion model in opt.', default='generator')
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parser.add_argument('-diffusion_model_path', type=str, help='Diffusion model checkpoint to load.', default='X:\\dlas\\experiments\\train_diffusion_vocoder_with_cond_new_dvae_full\\models\\6100_generator_ema.pth')
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parser.add_argument('-dvae_model_name', type=str, help='Name of the DVAE model in opt.', default='dvae')
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parser.add_argument('-opt_gpt_tts', type=str, help='Path to options YAML file used to train the GPT-TTS model', default='X:\\dlas\\experiments\\train_gpt_unified_voice.yml')
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parser.add_argument('-gpt_tts_model_name', type=str, help='Name of the GPT TTS model in opt.', default='gpt')
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parser.add_argument('-gpt_tts_model_path', type=str, help='GPT TTS model checkpoint to load.', default='X:\\dlas\\experiments\\train_gpt_unified_voice\\models\\54000_gpt.pth')
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parser.add_argument('-text', type=str, help='Text to speak.', default="I am a language model that has learned to speak.")
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parser.add_argument('-cond_path', type=str, help='Path to condioning sample.', default='')
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parser.add_argument('-cond_preset', type=str, help='Use a preset conditioning voice (defined above). Overrides cond_path.', default='libri_test')
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parser.add_argument('-num_samples', type=int, help='How many outputs to produce.', default=1)
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args = parser.parse_args()
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print("Loading GPT TTS..")
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with open(args.opt_gpt_tts, mode='r') as f:
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gpt_opt = yaml.load(f, Loader=Loader)
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gpt_opt['networks'][args.gpt_tts_model_name]['kwargs']['checkpointing'] = False # Required for beam search
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gpt = load_model_from_config(preloaded_options=gpt_opt, model_name=args.gpt_tts_model_name, also_load_savepoint=False, load_path=args.gpt_tts_model_path)
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print("Loading data..")
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tokenizer = CharacterTokenizer()
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text = torch.IntTensor(tokenizer.encode(args.text.strip().lower()).ids).unsqueeze(0).cuda()
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paired_text_length = gpt_opt['datasets']['train']['max_paired_text_length']
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padding_needed = paired_text_length - text.shape[1]
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assert padding_needed > 0
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text = F.pad(text, (0,padding_needed))
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cond_path = args.cond_path if args.cond_preset is None else preselected_cond_voices[args.cond_preset]
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conds, cond_wav = load_conditioning(cond_path)
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print("Performing GPT inference..")
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codes = gpt.inference_speech(conds, text, num_beams=1, repetition_penalty=1.0, do_sample=True, top_k=20, top_p=.95,
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num_return_sequences=args.num_samples, length_penalty=1, early_stopping=True)
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# Delete the GPT TTS model to free up GPU memory
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stop_token = gpt.stop_mel_token
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del gpt
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print("Loading DVAE..")
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dvae = load_model_from_config(args.opt_diffuse, args.dvae_model_name)
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print("Loading Diffusion Model..")
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diffusion = load_model_from_config(args.opt_diffuse, args.diffusion_model_name, also_load_savepoint=False, load_path=args.diffusion_model_path)
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diffuser = load_discrete_vocoder_diffuser(desired_diffusion_steps=50)
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print("Performing vocoding..")
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# Perform vocoding on each batch element separately: Vocoding is very memory intensive.
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for b in range(codes.shape[0]):
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code = fix_autoregressive_output(codes[b], stop_token).unsqueeze(0)
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wav = do_spectrogram_diffusion(diffusion, dvae, diffuser, code, cond_wav,
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spectrogram_compression_factor=128, plt_spec=False)
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torchaudio.save(f'gpt_tts_output_{b}.wav', wav.squeeze(0).cpu(), 11025)
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