| import os
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| import shutil
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| import unittest
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|
|
| import numpy as np
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| import torch
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| from torch.utils.data import DataLoader
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|
|
| from tests import get_tests_data_path, get_tests_output_path
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| from TTS.tts.configs.shared_configs import BaseDatasetConfig, BaseTTSConfig
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| from TTS.tts.datasets import TTSDataset, load_tts_samples
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| from TTS.tts.utils.text.tokenizer import TTSTokenizer
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| from TTS.utils.audio import AudioProcessor
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|
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|
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| OUTPATH = os.path.join(get_tests_output_path(), "loader_tests/")
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| os.makedirs(OUTPATH, exist_ok=True)
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|
|
|
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| c = BaseTTSConfig(text_cleaner="english_cleaners", num_loader_workers=0, batch_size=2, use_noise_augment=False)
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| c.r = 5
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| c.data_path = os.path.join(get_tests_data_path(), "ljspeech/")
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| ok_ljspeech = os.path.exists(c.data_path)
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|
|
| dataset_config = BaseDatasetConfig(
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| name="ljspeech_test",
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| meta_file_train="metadata.csv",
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| meta_file_val=None,
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| path=c.data_path,
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| language="en",
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| )
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|
|
| DATA_EXIST = True
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| if not os.path.exists(c.data_path):
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| DATA_EXIST = False
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|
|
| print(" > Dynamic data loader test: {}".format(DATA_EXIST))
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|
|
|
|
| class TestTTSDataset(unittest.TestCase):
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| def __init__(self, *args, **kwargs):
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| super().__init__(*args, **kwargs)
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| self.max_loader_iter = 4
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| self.ap = AudioProcessor(**c.audio)
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|
|
| def _create_dataloader(self, batch_size, r, bgs, start_by_longest=False):
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|
|
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| meta_data_train, meta_data_eval = load_tts_samples(dataset_config, eval_split=True, eval_split_size=0.2)
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| items = meta_data_train + meta_data_eval
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|
|
| tokenizer, _ = TTSTokenizer.init_from_config(c)
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| dataset = TTSDataset(
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| outputs_per_step=r,
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| compute_linear_spec=True,
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| return_wav=True,
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| tokenizer=tokenizer,
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| ap=self.ap,
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| samples=items,
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| batch_group_size=bgs,
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| min_text_len=c.min_text_len,
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| max_text_len=c.max_text_len,
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| min_audio_len=c.min_audio_len,
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| max_audio_len=c.max_audio_len,
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| start_by_longest=start_by_longest,
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| )
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| dataloader = DataLoader(
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| dataset,
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| batch_size=batch_size,
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| shuffle=False,
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| collate_fn=dataset.collate_fn,
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| drop_last=True,
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| num_workers=c.num_loader_workers,
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| )
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| return dataloader, dataset
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|
|
| def test_loader(self):
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| if ok_ljspeech:
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| dataloader, dataset = self._create_dataloader(1, 1, 0)
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|
|
| for i, data in enumerate(dataloader):
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| if i == self.max_loader_iter:
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| break
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| text_input = data["token_id"]
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| _ = data["token_id_lengths"]
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| speaker_name = data["speaker_names"]
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| linear_input = data["linear"]
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| mel_input = data["mel"]
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| mel_lengths = data["mel_lengths"]
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| _ = data["stop_targets"]
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| _ = data["item_idxs"]
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| wavs = data["waveform"]
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|
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| neg_values = text_input[text_input < 0]
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| check_count = len(neg_values)
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|
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| self.assertEqual(check_count, 0)
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| self.assertEqual(linear_input.shape[0], mel_input.shape[0], c.batch_size)
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| self.assertEqual(linear_input.shape[2], self.ap.fft_size // 2 + 1)
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| self.assertEqual(mel_input.shape[2], c.audio["num_mels"])
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| self.assertEqual(wavs.shape[1], mel_input.shape[1] * c.audio.hop_length)
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| self.assertIsInstance(speaker_name[0], str)
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|
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| mel_new = self.ap.melspectrogram(wavs[0].squeeze().numpy())
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|
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| mel_dataloader = mel_input[0].T.numpy()[:, : mel_lengths[0]]
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|
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| mel_new = mel_new[:, : mel_lengths[0]]
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| ignore_seg = -(1 + c.audio.win_length // c.audio.hop_length)
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| mel_diff = (mel_new[:, : mel_input.shape[1]] - mel_input[0].T.numpy())[:, 0:ignore_seg]
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| self.assertLess(abs(mel_diff.sum()), 1e-5)
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|
|
|
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| if self.ap.symmetric_norm:
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| self.assertLessEqual(mel_input.max(), self.ap.max_norm)
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| self.assertGreaterEqual(
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| mel_input.min(), -self.ap.max_norm
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| )
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| self.assertLess(mel_input.min(), 0)
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| else:
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| self.assertLessEqual(mel_input.max(), self.ap.max_norm)
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| self.assertGreaterEqual(mel_input.min(), 0)
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|
|
| def test_batch_group_shuffle(self):
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| if ok_ljspeech:
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| dataloader, dataset = self._create_dataloader(2, c.r, 16)
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| last_length = 0
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| frames = dataset.samples
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| for i, data in enumerate(dataloader):
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| if i == self.max_loader_iter:
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| break
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| mel_lengths = data["mel_lengths"]
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| avg_length = mel_lengths.numpy().mean()
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| dataloader.dataset.preprocess_samples()
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| is_items_reordered = False
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| for idx, item in enumerate(dataloader.dataset.samples):
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| if item != frames[idx]:
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| is_items_reordered = True
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| break
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| self.assertGreaterEqual(avg_length, last_length)
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| self.assertTrue(is_items_reordered)
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|
|
| def test_start_by_longest(self):
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| """Test start_by_longest option.
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|
|
| Ther first item of the fist batch must be longer than all the other items.
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| """
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| if ok_ljspeech:
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| dataloader, _ = self._create_dataloader(2, c.r, 0, True)
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| dataloader.dataset.preprocess_samples()
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| for i, data in enumerate(dataloader):
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| if i == self.max_loader_iter:
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| break
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| mel_lengths = data["mel_lengths"]
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| if i == 0:
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| max_len = mel_lengths[0]
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| print(mel_lengths)
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| self.assertTrue(all(max_len >= mel_lengths))
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|
|
| def test_padding_and_spectrograms(self):
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| def check_conditions(idx, linear_input, mel_input, stop_target, mel_lengths):
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| self.assertNotEqual(linear_input[idx, -1].sum(), 0)
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| self.assertNotEqual(linear_input[idx, -2].sum(), 0)
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| self.assertNotEqual(mel_input[idx, -1].sum(), 0)
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| self.assertNotEqual(mel_input[idx, -2].sum(), 0)
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| self.assertEqual(stop_target[idx, -1], 1)
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| self.assertEqual(stop_target[idx, -2], 0)
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| self.assertEqual(stop_target[idx].sum(), 1)
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| self.assertEqual(len(mel_lengths.shape), 1)
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| self.assertEqual(mel_lengths[idx], linear_input[idx].shape[0])
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| self.assertEqual(mel_lengths[idx], mel_input[idx].shape[0])
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|
|
| if ok_ljspeech:
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| dataloader, _ = self._create_dataloader(1, 1, 0)
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|
|
| for i, data in enumerate(dataloader):
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| if i == self.max_loader_iter:
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| break
|
| linear_input = data["linear"]
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| mel_input = data["mel"]
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| mel_lengths = data["mel_lengths"]
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| stop_target = data["stop_targets"]
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| item_idx = data["item_idxs"]
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|
|
|
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| wav = np.asarray(self.ap.load_wav(item_idx[0]), dtype=np.float32)
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| mel = self.ap.melspectrogram(wav).astype("float32")
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| mel = torch.FloatTensor(mel).contiguous()
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| mel_dl = mel_input[0]
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|
|
|
|
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| self.assertLess(abs(mel.T - mel_dl).max(), 1e-5)
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|
|
|
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| mel_spec = mel_input[0].cpu().numpy()
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| wav = self.ap.inv_melspectrogram(mel_spec.T)
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| self.ap.save_wav(wav, OUTPATH + "/mel_inv_dataloader.wav")
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| shutil.copy(item_idx[0], OUTPATH + "/mel_target_dataloader.wav")
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|
|
|
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| linear_spec = linear_input[0].cpu().numpy()
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| wav = self.ap.inv_spectrogram(linear_spec.T)
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| self.ap.save_wav(wav, OUTPATH + "/linear_inv_dataloader.wav")
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| shutil.copy(item_idx[0], OUTPATH + "/linear_target_dataloader.wav")
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|
|
|
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| check_conditions(0, linear_input, mel_input, stop_target, mel_lengths)
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|
|
|
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| dataloader, _ = self._create_dataloader(2, 1, 0)
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|
|
| for i, data in enumerate(dataloader):
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| if i == self.max_loader_iter:
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| break
|
| linear_input = data["linear"]
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| mel_input = data["mel"]
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| mel_lengths = data["mel_lengths"]
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| stop_target = data["stop_targets"]
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| item_idx = data["item_idxs"]
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|
|
|
|
| if mel_lengths[0] > mel_lengths[1]:
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| idx = 0
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| else:
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| idx = 1
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|
|
|
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| check_conditions(idx, linear_input, mel_input, stop_target, mel_lengths)
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|
|
|
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| self.assertEqual(linear_input[1 - idx, -1].sum(), 0)
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| self.assertEqual(mel_input[1 - idx, -1].sum(), 0)
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| self.assertEqual(stop_target[1, mel_lengths[1] - 1], 1)
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| self.assertEqual(stop_target[1, mel_lengths[1] :].sum(), stop_target.shape[1] - mel_lengths[1])
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| self.assertEqual(len(mel_lengths.shape), 1)
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