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synthesize.py
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synthesize.py
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import argparse
import os
from warnings import warn
from time import sleep
import tensorflow as tf
from hparams import hparams
from infolog import log
from tacotron.synthesize import tacotron_synthesize
def prepare_run(args):
modified_hp = hparams.parse(args.hparams)
os.environ['TF_CPP_MIN_LOG_LEVEL'] = '2'
run_name = args.name or args.tacotron_name or args.model
taco_checkpoint = os.path.join('logs-' + run_name, 'taco_' + args.checkpoint)
return taco_checkpoint, modified_hp
def get_sentences(args):
if args.text_list != '':
with open(args.text_list, 'rb') as f:
sentences = list(map(lambda l: l.decode("utf-8")[:-1], f.readlines()))
else:
sentences = hparams.sentences
return sentences
def main():
accepted_modes = ['eval', 'synthesis', 'live']
parser = argparse.ArgumentParser()
parser.add_argument('--checkpoint', default='pretrained/', help='Path to model checkpoint')
parser.add_argument('--hparams', default='',
help='Hyperparameter overrides as a comma-separated list of name=value pairs')
parser.add_argument('--name', help='Name of logging directory if the two models were trained together.')
parser.add_argument('--tacotron_name', help='Name of logging directory of Tacotron. If trained separately')
parser.add_argument('--wavenet_name', help='Name of logging directory of WaveNet. If trained separately')
parser.add_argument('--model', default='Tacotron')
parser.add_argument('--input_dir', default='training_data/', help='folder to contain inputs sentences/targets')
parser.add_argument('--mels_dir', default='tacotron_output/eval/', help='folder to contain mels to synthesize audio from using the Wavenet')
parser.add_argument('--output_dir', default='output/', help='folder to contain synthesized mel spectrograms')
parser.add_argument('--mode', default='eval', help='mode of run: can be one of {}'.format(accepted_modes))
parser.add_argument('--GTA', default='True', help='Ground truth aligned synthesis, defaults to True, only considered in synthesis mode')
parser.add_argument('--text_list', default='', help='Text file contains list of texts to be synthesized. Valid if mode=eval')
parser.add_argument('--speaker_id', default=None, help='Defines the speakers ids to use when running standalone Wavenet on a folder of mels. this variable must be a comma-separated list of ids')
args = parser.parse_args()
accepted_models = ['Tacotron']
if args.model not in accepted_models:
raise ValueError('please enter a valid model to synthesize with: {}'.format(accepted_models))
if args.mode not in accepted_modes:
raise ValueError('accepted modes are: {}, found {}'.format(accepted_modes, args.mode))
if args.GTA not in ('True', 'False'):
raise ValueError('GTA option must be either True or False')
taco_checkpoint, hparams = prepare_run(args)
sentences = get_sentences(args)
if args.model == 'Tacotron':
_ = tacotron_synthesize(args, hparams, taco_checkpoint, sentences)
else:
raise ValueError('Model provided {} unknown! {}'.format(args.model, accepted_models))
if __name__ == '__main__':
main()