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