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dataloader.py
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dataloader.py
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#coding: utf-8
import os
import os.path as osp
import time
import random
import numpy as np
import random
import string
import pickle
import torch
from torch import nn
import torch.nn.functional as F
from torch.utils.data import DataLoader
from text_utils import TextCleaner
import logging
logger = logging.getLogger(__name__)
logger.setLevel(logging.DEBUG)
np.random.seed(1)
random.seed(1)
class FilePathDataset(torch.utils.data.Dataset):
def __init__(self, dataset,
token_maps="token_maps.pkl",
tokenizer="transfo-xl-wt103",
word_separator=3039,
token_separator=" ",
token_mask="M",
max_mel_length=512,
word_mask_prob=0.15,
phoneme_mask_prob=0.1,
replace_prob=0.2):
self.data = dataset
self.max_mel_length = max_mel_length
self.word_mask_prob = word_mask_prob
self.phoneme_mask_prob = phoneme_mask_prob
self.replace_prob = replace_prob
self.text_cleaner = TextCleaner()
self.word_separator = word_separator
self.token_separator = token_separator
self.token_mask = token_mask
with open(token_maps, 'rb') as handle:
self.token_maps = pickle.load(handle)
def __len__(self):
return len(self.data)
def __getitem__(self, idx):
phonemes = self.data[idx]['phonemes']
input_ids = self.data[idx]['input_ids']
words = []
labels = ""
phoneme = ""
phoneme_list = ''.join(phonemes)
masked_index = []
for z in zip(phonemes, input_ids):
z = list(z)
words.extend([z[1]] * len(z[0]))
words.append(self.word_separator)
labels += z[0] + " "
if np.random.rand() < self.word_mask_prob:
if np.random.rand() < self.replace_prob:
if np.random.rand() < (self.phoneme_mask_prob / self.replace_prob):
phoneme += ''.join([phoneme_list[np.random.randint(0, len(phoneme_list))] for _ in range(len(z[0]))]) # randomized
else:
phoneme += z[0]
else:
phoneme += self.token_mask * len(z[0]) # masked
masked_index.extend((np.arange(len(phoneme) - len(z[0]), len(phoneme))).tolist())
else:
phoneme += z[0]
phoneme += self.token_separator
mel_length = len(phoneme)
masked_idx = np.array(masked_index)
masked_index = []
if mel_length > self.max_mel_length:
random_start = np.random.randint(0, mel_length - self.max_mel_length)
phoneme = phoneme[random_start:random_start + self.max_mel_length]
words = words[random_start:random_start + self.max_mel_length]
labels = labels[random_start:random_start + self.max_mel_length]
for m in masked_idx:
if m >= random_start and m < random_start + self.max_mel_length:
masked_index.append(m - random_start)
else:
masked_index = masked_idx
phoneme = self.text_cleaner(phoneme)
labels = self.text_cleaner(labels)
words = [self.token_maps[w]['token'] for w in words]
assert len(phoneme) == len(words)
assert len(phoneme) == len(labels)
phonemes = torch.LongTensor(phoneme)
labels = torch.LongTensor(labels)
words = torch.LongTensor(words)
return phonemes, words, labels, masked_index
class Collater(object):
"""
Args:
adaptive_batch_size (bool): if true, decrease batch size when long data comes.
"""
def __init__(self, return_wave=False):
self.text_pad_index = 0
self.return_wave = return_wave
def __call__(self, batch):
# batch[0] = wave, mel, text, f0, speakerid
batch_size = len(batch)
# sort by mel length
lengths = [b[1].shape[0] for b in batch]
batch_indexes = np.argsort(lengths)[::-1]
batch = [batch[bid] for bid in batch_indexes]
max_text_length = max([b[1].shape[0] for b in batch])
words = torch.zeros((batch_size, max_text_length)).long()
labels = torch.zeros((batch_size, max_text_length)).long()
phonemes = torch.zeros((batch_size, max_text_length)).long()
input_lengths = []
masked_indices = []
for bid, (phoneme, word, label, masked_index) in enumerate(batch):
text_size = phoneme.size(0)
words[bid, :text_size] = word
labels[bid, :text_size] = label
phonemes[bid, :text_size] = phoneme
input_lengths.append(text_size)
masked_indices.append(masked_index)
return words, labels, phonemes, input_lengths, masked_indices
def build_dataloader(df,
validation=False,
batch_size=4,
num_workers=1,
device='cpu',
collate_config={},
dataset_config={}):
dataset = FilePathDataset(df, **dataset_config)
collate_fn = Collater(**collate_config)
data_loader = DataLoader(dataset,
batch_size=batch_size,
shuffle=(not validation),
num_workers=num_workers,
drop_last=(not validation),
collate_fn=collate_fn,
pin_memory=(device != 'cpu'))
return data_loader