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from dataclasses import dataclass, field |
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from typing import Dict, List, Union |
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import torch |
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from coqpit import Coqpit |
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from torch import nn |
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from TTS.tts.layers.align_tts.mdn import MDNBlock |
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from TTS.tts.layers.feed_forward.decoder import Decoder |
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from TTS.tts.layers.feed_forward.duration_predictor import DurationPredictor |
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from TTS.tts.layers.feed_forward.encoder import Encoder |
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from TTS.tts.layers.generic.pos_encoding import PositionalEncoding |
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from TTS.tts.models.base_tts import BaseTTS |
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from TTS.tts.utils.helpers import generate_path, maximum_path, sequence_mask |
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from TTS.tts.utils.speakers import SpeakerManager |
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from TTS.tts.utils.text.tokenizer import TTSTokenizer |
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from TTS.tts.utils.visual import plot_alignment, plot_spectrogram |
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from TTS.utils.io import load_fsspec |
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@dataclass |
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class AlignTTSArgs(Coqpit): |
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""" |
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Args: |
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num_chars (int): |
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number of unique input to characters |
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out_channels (int): |
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number of output tensor channels. It is equal to the expected spectrogram size. |
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hidden_channels (int): |
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number of channels in all the model layers. |
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hidden_channels_ffn (int): |
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number of channels in transformer's conv layers. |
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hidden_channels_dp (int): |
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number of channels in duration predictor network. |
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num_heads (int): |
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number of attention heads in transformer networks. |
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num_transformer_layers (int): |
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number of layers in encoder and decoder transformer blocks. |
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dropout_p (int): |
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dropout rate in transformer layers. |
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length_scale (int, optional): |
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coefficient to set the speech speed. <1 slower, >1 faster. Defaults to 1. |
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num_speakers (int, optional): |
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number of speakers for multi-speaker training. Defaults to 0. |
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external_c (bool, optional): |
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enable external speaker embeddings. Defaults to False. |
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c_in_channels (int, optional): |
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number of channels in speaker embedding vectors. Defaults to 0. |
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""" |
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num_chars: int = None |
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out_channels: int = 80 |
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hidden_channels: int = 256 |
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hidden_channels_dp: int = 256 |
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encoder_type: str = "fftransformer" |
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encoder_params: dict = field( |
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default_factory=lambda: {"hidden_channels_ffn": 1024, "num_heads": 2, "num_layers": 6, "dropout_p": 0.1} |
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) |
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decoder_type: str = "fftransformer" |
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decoder_params: dict = field( |
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default_factory=lambda: {"hidden_channels_ffn": 1024, "num_heads": 2, "num_layers": 6, "dropout_p": 0.1} |
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) |
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length_scale: float = 1.0 |
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num_speakers: int = 0 |
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use_speaker_embedding: bool = False |
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use_d_vector_file: bool = False |
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d_vector_dim: int = 0 |
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class AlignTTS(BaseTTS): |
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"""AlignTTS with modified duration predictor. |
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https://arxiv.org/pdf/2003.01950.pdf |
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Encoder -> DurationPredictor -> Decoder |
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Check :class:`AlignTTSArgs` for the class arguments. |
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Paper Abstract: |
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Targeting at both high efficiency and performance, we propose AlignTTS to predict the |
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mel-spectrum in parallel. AlignTTS is based on a Feed-Forward Transformer which generates mel-spectrum from a |
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sequence of characters, and the duration of each character is determined by a duration predictor.Instead of |
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adopting the attention mechanism in Transformer TTS to align text to mel-spectrum, the alignment loss is presented |
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to consider all possible alignments in training by use of dynamic programming. Experiments on the LJSpeech dataset s |
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how that our model achieves not only state-of-the-art performance which outperforms Transformer TTS by 0.03 in mean |
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option score (MOS), but also a high efficiency which is more than 50 times faster than real-time. |
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Note: |
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Original model uses a separate character embedding layer for duration predictor. However, it causes the |
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duration predictor to overfit and prevents learning higher level interactions among characters. Therefore, |
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we predict durations based on encoder outputs which has higher level information about input characters. This |
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enables training without phases as in the original paper. |
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Original model uses Transormers in encoder and decoder layers. However, here you can set the architecture |
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differently based on your requirements using ```encoder_type``` and ```decoder_type``` parameters. |
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Examples: |
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>>> from TTS.tts.configs.align_tts_config import AlignTTSConfig |
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>>> config = AlignTTSConfig() |
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>>> model = AlignTTS(config) |
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""" |
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def __init__( |
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self, |
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config: "AlignTTSConfig", |
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ap: "AudioProcessor" = None, |
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tokenizer: "TTSTokenizer" = None, |
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speaker_manager: SpeakerManager = None, |
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): |
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super().__init__(config, ap, tokenizer, speaker_manager) |
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self.speaker_manager = speaker_manager |
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self.phase = -1 |
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self.length_scale = ( |
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float(config.model_args.length_scale) |
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if isinstance(config.model_args.length_scale, int) |
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else config.model_args.length_scale |
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) |
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self.emb = nn.Embedding(self.config.model_args.num_chars, self.config.model_args.hidden_channels) |
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self.embedded_speaker_dim = 0 |
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self.init_multispeaker(config) |
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self.pos_encoder = PositionalEncoding(config.model_args.hidden_channels) |
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self.encoder = Encoder( |
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config.model_args.hidden_channels, |
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config.model_args.hidden_channels, |
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config.model_args.encoder_type, |
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config.model_args.encoder_params, |
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self.embedded_speaker_dim, |
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) |
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self.decoder = Decoder( |
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config.model_args.out_channels, |
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config.model_args.hidden_channels, |
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config.model_args.decoder_type, |
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config.model_args.decoder_params, |
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) |
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self.duration_predictor = DurationPredictor(config.model_args.hidden_channels_dp) |
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self.mod_layer = nn.Conv1d(config.model_args.hidden_channels, config.model_args.hidden_channels, 1) |
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self.mdn_block = MDNBlock(config.model_args.hidden_channels, 2 * config.model_args.out_channels) |
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if self.embedded_speaker_dim > 0 and self.embedded_speaker_dim != config.model_args.hidden_channels: |
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self.proj_g = nn.Conv1d(self.embedded_speaker_dim, config.model_args.hidden_channels, 1) |
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@staticmethod |
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def compute_log_probs(mu, log_sigma, y): |
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y = y.transpose(1, 2).unsqueeze(1) |
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mu = mu.transpose(1, 2).unsqueeze(2) |
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log_sigma = log_sigma.transpose(1, 2).unsqueeze(2) |
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expanded_y, expanded_mu = torch.broadcast_tensors(y, mu) |
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exponential = -0.5 * torch.mean( |
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torch._C._nn.mse_loss(expanded_y, expanded_mu, 0) / torch.pow(log_sigma.exp(), 2), dim=-1 |
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) |
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logp = exponential - 0.5 * log_sigma.mean(dim=-1) |
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return logp |
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def compute_align_path(self, mu, log_sigma, y, x_mask, y_mask): |
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attn_mask = torch.unsqueeze(x_mask, -1) * torch.unsqueeze(y_mask, 2) |
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log_p = self.compute_log_probs(mu, log_sigma, y) |
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attn = maximum_path(log_p, attn_mask.squeeze(1)).unsqueeze(1) |
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dr_mas = torch.sum(attn, -1) |
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return dr_mas.squeeze(1), log_p |
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@staticmethod |
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def generate_attn(dr, x_mask, y_mask=None): |
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if y_mask is None: |
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y_lengths = dr.sum(1).long() |
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y_lengths[y_lengths < 1] = 1 |
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y_mask = torch.unsqueeze(sequence_mask(y_lengths, None), 1).to(dr.dtype) |
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attn_mask = torch.unsqueeze(x_mask, -1) * torch.unsqueeze(y_mask, 2) |
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attn = generate_path(dr, attn_mask.squeeze(1)).to(dr.dtype) |
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return attn |
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def expand_encoder_outputs(self, en, dr, x_mask, y_mask): |
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"""Generate attention alignment map from durations and |
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expand encoder outputs |
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Examples:: |
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- encoder output: [a,b,c,d] |
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- durations: [1, 3, 2, 1] |
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- expanded: [a, b, b, b, c, c, d] |
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- attention map: [[0, 0, 0, 0, 0, 0, 1], |
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[0, 0, 0, 0, 1, 1, 0], |
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[0, 1, 1, 1, 0, 0, 0], |
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[1, 0, 0, 0, 0, 0, 0]] |
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""" |
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attn = self.generate_attn(dr, x_mask, y_mask) |
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o_en_ex = torch.matmul(attn.squeeze(1).transpose(1, 2), en.transpose(1, 2)).transpose(1, 2) |
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return o_en_ex, attn |
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def format_durations(self, o_dr_log, x_mask): |
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o_dr = (torch.exp(o_dr_log) - 1) * x_mask * self.length_scale |
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o_dr[o_dr < 1] = 1.0 |
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o_dr = torch.round(o_dr) |
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return o_dr |
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@staticmethod |
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def _concat_speaker_embedding(o_en, g): |
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g_exp = g.expand(-1, -1, o_en.size(-1)) |
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o_en = torch.cat([o_en, g_exp], 1) |
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return o_en |
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def _sum_speaker_embedding(self, x, g): |
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if hasattr(self, "proj_g"): |
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g = self.proj_g(g) |
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return x + g |
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def _forward_encoder(self, x, x_lengths, g=None): |
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if hasattr(self, "emb_g"): |
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g = nn.functional.normalize(self.speaker_embedding(g)) |
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if g is not None: |
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g = g.unsqueeze(-1) |
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x_emb = self.emb(x) |
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x_emb = torch.transpose(x_emb, 1, -1) |
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x_mask = torch.unsqueeze(sequence_mask(x_lengths, x.shape[1]), 1).to(x.dtype) |
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o_en = self.encoder(x_emb, x_mask) |
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if g is not None: |
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o_en_dp = self._concat_speaker_embedding(o_en, g) |
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else: |
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o_en_dp = o_en |
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return o_en, o_en_dp, x_mask, g |
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def _forward_decoder(self, o_en, o_en_dp, dr, x_mask, y_lengths, g): |
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y_mask = torch.unsqueeze(sequence_mask(y_lengths, None), 1).to(o_en_dp.dtype) |
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o_en_ex, attn = self.expand_encoder_outputs(o_en, dr, x_mask, y_mask) |
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if hasattr(self, "pos_encoder"): |
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o_en_ex = self.pos_encoder(o_en_ex, y_mask) |
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if g is not None: |
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o_en_ex = self._sum_speaker_embedding(o_en_ex, g) |
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o_de = self.decoder(o_en_ex, y_mask, g=g) |
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return o_de, attn.transpose(1, 2) |
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def _forward_mdn(self, o_en, y, y_lengths, x_mask): |
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mu, log_sigma = self.mdn_block(o_en) |
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y_mask = torch.unsqueeze(sequence_mask(y_lengths, None), 1).to(o_en.dtype) |
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dr_mas, logp = self.compute_align_path(mu, log_sigma, y, x_mask, y_mask) |
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return dr_mas, mu, log_sigma, logp |
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def forward( |
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self, x, x_lengths, y, y_lengths, aux_input={"d_vectors": None}, phase=None |
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): |
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""" |
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Shapes: |
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- x: :math:`[B, T_max]` |
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- x_lengths: :math:`[B]` |
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- y_lengths: :math:`[B]` |
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- dr: :math:`[B, T_max]` |
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- g: :math:`[B, C]` |
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""" |
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y = y.transpose(1, 2) |
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g = aux_input["d_vectors"] if "d_vectors" in aux_input else None |
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o_de, o_dr_log, dr_mas_log, attn, mu, log_sigma, logp = None, None, None, None, None, None, None |
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if phase == 0: |
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o_en, o_en_dp, x_mask, g = self._forward_encoder(x, x_lengths, g) |
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dr_mas, mu, log_sigma, logp = self._forward_mdn(o_en, y, y_lengths, x_mask) |
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y_mask = torch.unsqueeze(sequence_mask(y_lengths, None), 1).to(o_en_dp.dtype) |
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attn = self.generate_attn(dr_mas, x_mask, y_mask) |
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elif phase == 1: |
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o_en, o_en_dp, x_mask, g = self._forward_encoder(x, x_lengths, g) |
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dr_mas, _, _, _ = self._forward_mdn(o_en, y, y_lengths, x_mask) |
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o_de, attn = self._forward_decoder(o_en.detach(), o_en_dp.detach(), dr_mas.detach(), x_mask, y_lengths, g=g) |
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elif phase == 2: |
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o_en, o_en_dp, x_mask, g = self._forward_encoder(x, x_lengths, g) |
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dr_mas, mu, log_sigma, logp = self._forward_mdn(o_en, y, y_lengths, x_mask) |
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o_de, attn = self._forward_decoder(o_en, o_en_dp, dr_mas, x_mask, y_lengths, g=g) |
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elif phase == 3: |
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o_en, o_en_dp, x_mask, g = self._forward_encoder(x, x_lengths, g) |
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o_dr_log = self.duration_predictor(x, x_mask) |
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dr_mas, mu, log_sigma, logp = self._forward_mdn(o_en, y, y_lengths, x_mask) |
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o_de, attn = self._forward_decoder(o_en, o_en_dp, dr_mas, x_mask, y_lengths, g=g) |
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o_dr_log = o_dr_log.squeeze(1) |
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else: |
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o_en, o_en_dp, x_mask, g = self._forward_encoder(x, x_lengths, g) |
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o_dr_log = self.duration_predictor(o_en_dp.detach(), x_mask) |
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dr_mas, mu, log_sigma, logp = self._forward_mdn(o_en, y, y_lengths, x_mask) |
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o_de, attn = self._forward_decoder(o_en, o_en_dp, dr_mas, x_mask, y_lengths, g=g) |
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o_dr_log = o_dr_log.squeeze(1) |
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dr_mas_log = torch.log(dr_mas + 1).squeeze(1) |
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outputs = { |
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"model_outputs": o_de.transpose(1, 2), |
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"alignments": attn, |
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"durations_log": o_dr_log, |
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"durations_mas_log": dr_mas_log, |
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"mu": mu, |
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"log_sigma": log_sigma, |
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"logp": logp, |
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} |
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return outputs |
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@torch.no_grad() |
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def inference(self, x, aux_input={"d_vectors": None}): |
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""" |
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Shapes: |
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- x: :math:`[B, T_max]` |
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- x_lengths: :math:`[B]` |
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- g: :math:`[B, C]` |
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""" |
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g = aux_input["d_vectors"] if "d_vectors" in aux_input else None |
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x_lengths = torch.tensor(x.shape[1:2]).to(x.device) |
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o_en, o_en_dp, x_mask, g = self._forward_encoder(x, x_lengths, g) |
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o_dr_log = self.duration_predictor(o_en_dp, x_mask) |
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o_dr = self.format_durations(o_dr_log, x_mask).squeeze(1) |
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y_lengths = o_dr.sum(1) |
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o_de, attn = self._forward_decoder(o_en, o_en_dp, o_dr, x_mask, y_lengths, g=g) |
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outputs = {"model_outputs": o_de.transpose(1, 2), "alignments": attn} |
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return outputs |
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def train_step(self, batch: dict, criterion: nn.Module): |
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text_input = batch["text_input"] |
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text_lengths = batch["text_lengths"] |
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mel_input = batch["mel_input"] |
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mel_lengths = batch["mel_lengths"] |
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d_vectors = batch["d_vectors"] |
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speaker_ids = batch["speaker_ids"] |
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aux_input = {"d_vectors": d_vectors, "speaker_ids": speaker_ids} |
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outputs = self.forward(text_input, text_lengths, mel_input, mel_lengths, aux_input, self.phase) |
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loss_dict = criterion( |
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outputs["logp"], |
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outputs["model_outputs"], |
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mel_input, |
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mel_lengths, |
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outputs["durations_log"], |
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outputs["durations_mas_log"], |
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text_lengths, |
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phase=self.phase, |
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) |
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return outputs, loss_dict |
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def _create_logs(self, batch, outputs, ap): |
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model_outputs = outputs["model_outputs"] |
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alignments = outputs["alignments"] |
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mel_input = batch["mel_input"] |
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pred_spec = model_outputs[0].data.cpu().numpy() |
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gt_spec = mel_input[0].data.cpu().numpy() |
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align_img = alignments[0].data.cpu().numpy() |
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figures = { |
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"prediction": plot_spectrogram(pred_spec, ap, output_fig=False), |
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"ground_truth": plot_spectrogram(gt_spec, ap, output_fig=False), |
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"alignment": plot_alignment(align_img, output_fig=False), |
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} |
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train_audio = ap.inv_melspectrogram(pred_spec.T) |
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return figures, {"audio": train_audio} |
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def train_log( |
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self, batch: dict, outputs: dict, logger: "Logger", assets: dict, steps: int |
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) -> None: |
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figures, audios = self._create_logs(batch, outputs, self.ap) |
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logger.train_figures(steps, figures) |
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logger.train_audios(steps, audios, self.ap.sample_rate) |
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def eval_step(self, batch: dict, criterion: nn.Module): |
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return self.train_step(batch, criterion) |
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def eval_log(self, batch: dict, outputs: dict, logger: "Logger", assets: dict, steps: int) -> None: |
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figures, audios = self._create_logs(batch, outputs, self.ap) |
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logger.eval_figures(steps, figures) |
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logger.eval_audios(steps, audios, self.ap.sample_rate) |
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|
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def load_checkpoint( |
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self, config, checkpoint_path, eval=False, cache=False |
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): |
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state = load_fsspec(checkpoint_path, map_location=torch.device("cpu"), cache=cache) |
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self.load_state_dict(state["model"]) |
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if eval: |
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self.eval() |
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assert not self.training |
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|
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def get_criterion(self): |
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from TTS.tts.layers.losses import AlignTTSLoss |
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return AlignTTSLoss(self.config) |
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@staticmethod |
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def _set_phase(config, global_step): |
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"""Decide AlignTTS training phase""" |
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if isinstance(config.phase_start_steps, list): |
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vals = [i < global_step for i in config.phase_start_steps] |
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if not True in vals: |
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phase = 0 |
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else: |
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phase = ( |
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len(config.phase_start_steps) |
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- [i < global_step for i in config.phase_start_steps][::-1].index(True) |
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- 1 |
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) |
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else: |
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phase = None |
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return phase |
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|
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def on_epoch_start(self, trainer): |
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"""Set AlignTTS training phase on epoch start.""" |
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self.phase = self._set_phase(trainer.config, trainer.total_steps_done) |
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@staticmethod |
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def init_from_config(config: "AlignTTSConfig", samples: Union[List[List], List[Dict]] = None): |
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"""Initiate model from config |
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Args: |
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config (AlignTTSConfig): Model config. |
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samples (Union[List[List], List[Dict]]): Training samples to parse speaker ids for training. |
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Defaults to None. |
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""" |
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from TTS.utils.audio import AudioProcessor |
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ap = AudioProcessor.init_from_config(config) |
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tokenizer, new_config = TTSTokenizer.init_from_config(config) |
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speaker_manager = SpeakerManager.init_from_config(config, samples) |
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return AlignTTS(new_config, ap, tokenizer, speaker_manager) |
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