from typing import Callable, Tuple import torch import torch.nn as nn # pylint: disable=consider-using-from-import from TTS.tts.layers.delightful_tts.variance_predictor import VariancePredictor from TTS.tts.utils.helpers import average_over_durations class PitchAdaptor(nn.Module): # pylint: disable=abstract-method """Module to get pitch embeddings via pitch predictor Args: n_input (int): Number of pitch predictor input channels. n_hidden (int): Number of pitch predictor hidden channels. n_out (int): Number of pitch predictor out channels. kernel size (int): Size of the kernel for conv layers. emb_kernel_size (int): Size the kernel for the pitch embedding. p_dropout (float): Probability of dropout. lrelu_slope (float): Slope for the leaky relu. Inputs: inputs, mask - **inputs** (batch, time1, dim): Tensor containing input vector - **target** (batch, 1, time2): Tensor containing the pitch target - **dr** (batch, time1): Tensor containing aligner durations vector - **mask** (batch, time1): Tensor containing indices to be masked Returns: - **pitch prediction** (batch, 1, time1): Tensor produced by pitch predictor - **pitch embedding** (batch, channels, time1): Tensor produced pitch pitch adaptor - **average pitch target(train only)** (batch, 1, time1): Tensor produced after averaging over durations """ def __init__( self, n_input: int, n_hidden: int, n_out: int, kernel_size: int, emb_kernel_size: int, p_dropout: float, lrelu_slope: float, ): super().__init__() self.pitch_predictor = VariancePredictor( channels_in=n_input, channels=n_hidden, channels_out=n_out, kernel_size=kernel_size, p_dropout=p_dropout, lrelu_slope=lrelu_slope, ) self.pitch_emb = nn.Conv1d( 1, n_input, kernel_size=emb_kernel_size, padding=int((emb_kernel_size - 1) / 2), ) def get_pitch_embedding_train( self, x: torch.Tensor, target: torch.Tensor, dr: torch.IntTensor, mask: torch.Tensor ) -> Tuple[torch.Tensor, torch.Tensor, torch.Tensor]: """ Shapes: x: :math: `[B, T_src, C]` target: :math: `[B, 1, T_max2]` dr: :math: `[B, T_src]` mask: :math: `[B, T_src]` """ pitch_pred = self.pitch_predictor(x, mask) # [B, T_src, C_hidden], [B, T_src] --> [B, T_src] pitch_pred.unsqueeze_(1) # --> [B, 1, T_src] avg_pitch_target = average_over_durations(target, dr) # [B, 1, T_mel], [B, T_src] --> [B, 1, T_src] pitch_emb = self.pitch_emb(avg_pitch_target) # [B, 1, T_src] --> [B, C_hidden, T_src] return pitch_pred, avg_pitch_target, pitch_emb def get_pitch_embedding( self, x: torch.Tensor, mask: torch.Tensor, pitch_transform: Callable, pitch_mean: torch.Tensor, pitch_std: torch.Tensor, ) -> torch.Tensor: pitch_pred = self.pitch_predictor(x, mask) if pitch_transform is not None: pitch_pred = pitch_transform(pitch_pred, (~mask).sum(), pitch_mean, pitch_std) pitch_pred.unsqueeze_(1) pitch_emb_pred = self.pitch_emb(pitch_pred) return pitch_emb_pred, pitch_pred