#!/usr/bin/env python3 """TTS mode decoding.""" import argparse import logging from pathlib import Path import shutil import sys import time from typing import Optional from typing import Sequence from typing import Tuple from typing import Union from collections import defaultdict import json import matplotlib import numpy as np import soundfile as sf import torch from typeguard import check_argument_types from espnet.utils.cli_utils import get_commandline_args from espnet2.fileio.npy_scp import NpyScpWriter from espnet2.tasks.tts import TTSTask from espnet2.torch_utils.device_funcs import to_device from espnet2.torch_utils.set_all_random_seed import set_all_random_seed from espnet2.tts.duration_calculator import DurationCalculator from espnet2.tts.fastspeech import FastSpeech from espnet2.tts.fastspeech2 import FastSpeech2 from espnet2.tts.fastespeech import FastESpeech from espnet2.tts.tacotron2 import Tacotron2 from espnet2.tts.transformer import Transformer from espnet2.utils import config_argparse from espnet2.utils.get_default_kwargs import get_default_kwargs from espnet2.utils.griffin_lim import Spectrogram2Waveform from espnet2.utils.nested_dict_action import NestedDictAction from espnet2.utils.types import str2bool from espnet2.utils.types import str2triple_str from espnet2.utils.types import str_or_none class Text2Speech: """Speech2Text class Examples: >>> import soundfile >>> text2speech = Text2Speech("config.yml", "model.pth") >>> wav = text2speech("Hello World")[0] >>> soundfile.write("out.wav", wav.numpy(), text2speech.fs, "PCM_16") """ def __init__( self, train_config: Optional[Union[Path, str]], model_file: Optional[Union[Path, str]] = None, threshold: float = 0.5, minlenratio: float = 0.0, maxlenratio: float = 10.0, use_teacher_forcing: bool = False, use_att_constraint: bool = False, backward_window: int = 1, forward_window: int = 3, speed_control_alpha: float = 1.0, vocoder_conf: dict = None, dtype: str = "float32", device: str = "cpu", ): assert check_argument_types() model, train_args = TTSTask.build_model_from_file( train_config, model_file, device ) model.to(dtype=getattr(torch, dtype)).eval() self.device = device self.dtype = dtype self.train_args = train_args self.model = model self.tts = model.tts self.normalize = model.normalize self.feats_extract = model.feats_extract self.duration_calculator = DurationCalculator() self.preprocess_fn = TTSTask.build_preprocess_fn(train_args, False) self.use_teacher_forcing = use_teacher_forcing logging.info(f"Normalization:\n{self.normalize}") logging.info(f"TTS:\n{self.tts}") decode_config = {} if isinstance(self.tts, (Tacotron2, Transformer)): decode_config.update( { "threshold": threshold, "maxlenratio": maxlenratio, "minlenratio": minlenratio, } ) if isinstance(self.tts, Tacotron2): decode_config.update( { "use_att_constraint": use_att_constraint, "forward_window": forward_window, "backward_window": backward_window, } ) if isinstance(self.tts, (FastSpeech, FastSpeech2, FastESpeech)): decode_config.update({"alpha": speed_control_alpha}) decode_config.update({"use_teacher_forcing": use_teacher_forcing}) self.decode_config = decode_config if vocoder_conf is None: vocoder_conf = {} if self.feats_extract is not None: vocoder_conf.update(self.feats_extract.get_parameters()) if ( "n_fft" in vocoder_conf and "n_shift" in vocoder_conf and "fs" in vocoder_conf ): self.spc2wav = Spectrogram2Waveform(**vocoder_conf) logging.info(f"Vocoder: {self.spc2wav}") else: self.spc2wav = None logging.info("Vocoder is not used because vocoder_conf is not sufficient") @torch.no_grad() def __call__( self, text: Union[str, torch.Tensor, np.ndarray], speech: Union[torch.Tensor, np.ndarray] = None, durations: Union[torch.Tensor, np.ndarray] = None, ref_embs: torch.Tensor = None, spembs: Union[torch.Tensor, np.ndarray] = None, # new addition fg_inds: torch.Tensor = None, ): assert check_argument_types() if self.use_speech and speech is None: raise RuntimeError("missing required argument: 'speech'") if isinstance(text, str): # str -> np.ndarray text = self.preprocess_fn("", {"text": text})["text"] batch = {"text": text, "ref_embs": ref_embs, "ar_prior_inference": True, "fg_inds": fg_inds} # TC marker if speech is not None: batch["speech"] = speech if durations is not None: batch["durations"] = durations if spembs is not None: batch["spembs"] = spembs batch = to_device(batch, self.device) outs, outs_denorm, probs, att_ws, ref_embs, ar_prior_loss = self.model.inference( **batch, **self.decode_config ) if att_ws is not None: duration, focus_rate = self.duration_calculator(att_ws) else: duration, focus_rate = None, None if self.spc2wav is not None: wav = torch.tensor(self.spc2wav(outs_denorm.cpu().numpy())) else: wav = None return wav, outs, outs_denorm, probs, att_ws, duration, focus_rate, ref_embs @property def fs(self) -> Optional[int]: if self.spc2wav is not None: return self.spc2wav.fs else: return None @property def use_speech(self) -> bool: """Check whether to require speech in inference. Returns: bool: True if speech is required else False. """ # TC marker, oorspr false -> set false for test_ref_embs, but true if testing wo duration return self.use_teacher_forcing or getattr(self.tts, "use_gst", False) def inference( output_dir: str, batch_size: int, dtype: str, ngpu: int, seed: int, num_workers: int, log_level: Union[int, str], data_path_and_name_and_type: Sequence[Tuple[str, str, str]], key_file: Optional[str], train_config: Optional[str], model_file: Optional[str], ref_embs: Optional[str], threshold: float, minlenratio: float, maxlenratio: float, use_teacher_forcing: bool, use_att_constraint: bool, backward_window: int, forward_window: int, speed_control_alpha: float, allow_variable_data_keys: bool, vocoder_conf: dict, ): """Perform TTS model decoding.""" assert check_argument_types() if batch_size > 1: raise NotImplementedError("batch decoding is not implemented") if ngpu > 1: raise NotImplementedError("only single GPU decoding is supported") logging.basicConfig( level=log_level, format="%(asctime)s (%(module)s:%(lineno)d) %(levelname)s: %(message)s", ) if len(ref_embs) > 0: ref_emb_in = torch.load(ref_embs).squeeze(0) else: ref_emb_in = None if ngpu >= 1: device = "cuda" else: device = "cpu" # 1. Set random-seed set_all_random_seed(seed) # 2. Build model text2speech = Text2Speech( train_config=train_config, model_file=model_file, threshold=threshold, maxlenratio=maxlenratio, minlenratio=minlenratio, use_teacher_forcing=use_teacher_forcing, use_att_constraint=use_att_constraint, backward_window=backward_window, forward_window=forward_window, speed_control_alpha=speed_control_alpha, vocoder_conf=vocoder_conf, dtype=dtype, device=device, ) # 3. Build data-iterator if not text2speech.use_speech: data_path_and_name_and_type = list( filter(lambda x: x[1] != "speech", data_path_and_name_and_type) ) loader = TTSTask.build_streaming_iterator( data_path_and_name_and_type, dtype=dtype, batch_size=batch_size, key_file=key_file, num_workers=num_workers, preprocess_fn=TTSTask.build_preprocess_fn(text2speech.train_args, False), collate_fn=TTSTask.build_collate_fn(text2speech.train_args, False), allow_variable_data_keys=allow_variable_data_keys, inference=True, ) # 6. Start for-loop output_dir = Path(output_dir) (output_dir / "norm").mkdir(parents=True, exist_ok=True) (output_dir / "denorm").mkdir(parents=True, exist_ok=True) (output_dir / "speech_shape").mkdir(parents=True, exist_ok=True) (output_dir / "wav").mkdir(parents=True, exist_ok=True) (output_dir / "att_ws").mkdir(parents=True, exist_ok=True) (output_dir / "probs").mkdir(parents=True, exist_ok=True) (output_dir / "durations").mkdir(parents=True, exist_ok=True) (output_dir / "focus_rates").mkdir(parents=True, exist_ok=True) # Lazy load to avoid the backend error matplotlib.use("Agg") import matplotlib.pyplot as plt from matplotlib.ticker import MaxNLocator with NpyScpWriter( output_dir / "norm", output_dir / "norm/feats.scp", ) as norm_writer, NpyScpWriter( output_dir / "denorm", output_dir / "denorm/feats.scp" ) as denorm_writer, open( output_dir / "speech_shape/speech_shape", "w" ) as shape_writer, open( output_dir / "durations/durations", "w" ) as duration_writer, open( output_dir / "focus_rates/focus_rates", "w" ) as focus_rate_writer, open( output_dir / "ref_embs", "w" ) as ref_embs_writer: ref_embs_list = [] ref_embs_dict = defaultdict(list) for idx, (keys, batch) in enumerate(loader, 1): assert isinstance(batch, dict), type(batch) assert all(isinstance(s, str) for s in keys), keys _bs = len(next(iter(batch.values()))) assert _bs == 1, _bs # Change to single sequence and remove *_length # because inference() requires 1-seq, not mini-batch. batch = {k: v[0] for k, v in batch.items() if not k.endswith("_lengths")} start_time = time.perf_counter() wav, outs, outs_denorm, probs, att_ws, duration, focus_rate, \ ref_embs = text2speech(ref_embs=ref_emb_in, **batch) key = keys[0] insize = next(iter(batch.values())).size(0) + 1 logging.info( "inference speed = {:.1f} frames / sec.".format( int(outs.size(0)) / (time.perf_counter() - start_time) ) ) logging.info(f"{key} (size:{insize}->{outs.size(0)})") if outs.size(0) == insize * maxlenratio: logging.warning(f"output length reaches maximum length ({key}).") norm_writer[key] = outs.cpu().numpy() shape_writer.write(f"{key} " + ",".join(map(str, outs.shape)) + "\n") denorm_writer[key] = outs_denorm.cpu().numpy() if duration is not None: # Save duration and fucus rates duration_writer.write( f"{key} " + " ".join(map(str, duration.cpu().numpy())) + "\n" ) focus_rate_writer.write(f"{key} {float(focus_rate):.5f}\n") # Plot attention weight att_ws = att_ws.cpu().numpy() if att_ws.ndim == 2: att_ws = att_ws[None][None] elif att_ws.ndim != 4: raise RuntimeError(f"Must be 2 or 4 dimension: {att_ws.ndim}") w, h = plt.figaspect(att_ws.shape[0] / att_ws.shape[1]) fig = plt.Figure( figsize=( w * 1.3 * min(att_ws.shape[0], 2.5), h * 1.3 * min(att_ws.shape[1], 2.5), ) ) fig.suptitle(f"{key}") axes = fig.subplots(att_ws.shape[0], att_ws.shape[1]) if len(att_ws) == 1: axes = [[axes]] for ax, att_w in zip(axes, att_ws): for ax_, att_w_ in zip(ax, att_w): ax_.imshow(att_w_.astype(np.float32), aspect="auto") ax_.set_xlabel("Input") ax_.set_ylabel("Output") ax_.xaxis.set_major_locator(MaxNLocator(integer=True)) ax_.yaxis.set_major_locator(MaxNLocator(integer=True)) fig.set_tight_layout({"rect": [0, 0.03, 1, 0.95]}) fig.savefig(output_dir / f"att_ws/{key}.png") fig.clf() if probs is not None: # Plot stop token prediction probs = probs.cpu().numpy() fig = plt.Figure() ax = fig.add_subplot(1, 1, 1) ax.plot(probs) ax.set_title(f"{key}") ax.set_xlabel("Output") ax.set_ylabel("Stop probability") ax.set_ylim(0, 1) ax.grid(which="both") fig.set_tight_layout(True) fig.savefig(output_dir / f"probs/{key}.png") fig.clf() # TODO(kamo): Write scp if wav is not None: sf.write( f"{output_dir}/wav/{key}.wav", wav.numpy(), text2speech.fs, "PCM_16" ) if ref_embs is not None: ref_emb_key = -1 for index, ref_emb in enumerate(ref_embs_list): if torch.equal(ref_emb, ref_embs): ref_emb_key = index if ref_emb_key == -1: ref_emb_key = len(ref_embs_list) ref_embs_list.append(ref_embs) ref_embs_dict[ref_emb_key].append(key) ref_embs_writer.write(json.dumps(ref_embs_dict)) for index, ref_emb in enumerate(ref_embs_list): filename = "ref_embs_" + str(index) + ".pt" torch.save(ref_emb, output_dir / filename) # remove duration related files if attention is not provided if att_ws is None: shutil.rmtree(output_dir / "att_ws") shutil.rmtree(output_dir / "durations") shutil.rmtree(output_dir / "focus_rates") if probs is None: shutil.rmtree(output_dir / "probs") def get_parser(): """Get argument parser.""" parser = config_argparse.ArgumentParser( description="TTS Decode", formatter_class=argparse.ArgumentDefaultsHelpFormatter, ) # Note(kamo): Use "_" instead of "-" as separator. # "-" is confusing if written in yaml. parser.add_argument( "--log_level", type=lambda x: x.upper(), default="INFO", choices=("CRITICAL", "ERROR", "WARNING", "INFO", "DEBUG", "NOTSET"), help="The verbose level of logging", ) parser.add_argument( "--output_dir", type=str, required=True, help="The path of output directory", ) parser.add_argument( "--ngpu", type=int, default=0, help="The number of gpus. 0 indicates CPU mode", ) parser.add_argument( "--seed", type=int, default=0, help="Random seed", ) parser.add_argument( "--dtype", default="float32", choices=["float16", "float32", "float64"], help="Data type", ) parser.add_argument( "--num_workers", type=int, default=1, help="The number of workers used for DataLoader", ) parser.add_argument( "--batch_size", type=int, default=1, help="The batch size for inference", ) group = parser.add_argument_group("Input data related") group.add_argument( "--data_path_and_name_and_type", type=str2triple_str, required=True, action="append", ) group.add_argument( "--key_file", type=str_or_none, ) group.add_argument( "--allow_variable_data_keys", type=str2bool, default=False, ) group.add_argument( "--ref_embs", type=str, default=False, ) group = parser.add_argument_group("The model configuration related") group.add_argument( "--train_config", type=str, help="Training configuration file.", ) group.add_argument( "--model_file", type=str, help="Model parameter file.", ) group = parser.add_argument_group("Decoding related") group.add_argument( "--maxlenratio", type=float, default=10.0, help="Maximum length ratio in decoding", ) group.add_argument( "--minlenratio", type=float, default=0.0, help="Minimum length ratio in decoding", ) group.add_argument( "--threshold", type=float, default=0.5, help="Threshold value in decoding", ) group.add_argument( "--use_att_constraint", type=str2bool, default=False, help="Whether to use attention constraint", ) group.add_argument( "--backward_window", type=int, default=1, help="Backward window value in attention constraint", ) group.add_argument( "--forward_window", type=int, default=3, help="Forward window value in attention constraint", ) group.add_argument( "--use_teacher_forcing", type=str2bool, default=False, help="Whether to use teacher forcing", ) parser.add_argument( "--speed_control_alpha", type=float, default=1.0, help="Alpha in FastSpeech to change the speed of generated speech", ) group = parser.add_argument_group("Grriffin-Lim related") group.add_argument( "--vocoder_conf", action=NestedDictAction, default=get_default_kwargs(Spectrogram2Waveform), help="The configuration for Grriffin-Lim", ) return parser def main(cmd=None): """Run TTS model decoding.""" print(get_commandline_args(), file=sys.stderr) parser = get_parser() args = parser.parse_args(cmd) kwargs = vars(args) kwargs.pop("config", None) inference(**kwargs) if __name__ == "__main__": main()