Xian Shi
2023-10-17 0dd01a880b8a7ed1d4549ee9b3a3d224e6fa1409
funasr/datasets/iterable_dataset.py
@@ -8,13 +8,14 @@
from typing import Iterator
from typing import Tuple
from typing import Union
from typing import List
import kaldiio
import numpy as np
import torch
import torchaudio
import soundfile
from torch.utils.data.dataset import IterableDataset
from typeguard import check_argument_types
import os.path
from funasr.datasets.dataset import ESPnetDataset
@@ -65,8 +66,17 @@
        bytes = f.read()
    return load_bytes(bytes)
def load_wav(input):
    try:
        return torchaudio.load(input)[0].numpy()
    except:
        waveform, _ = soundfile.read(input, dtype='float32')
        if waveform.ndim == 2:
            waveform = waveform[:, 0]
        return np.expand_dims(waveform, axis=0)
DATA_TYPES = {
    "sound": lambda x: torchaudio.load(x)[0].numpy(),
    "sound": load_wav,
    "pcm": load_pcm,
    "kaldi_ark": load_kaldi,
    "bytes": load_bytes,
@@ -110,7 +120,6 @@
            int_dtype: str = "long",
            key_file: str = None,
    ):
        assert check_argument_types()
        if len(path_name_type_list) == 0:
            raise ValueError(
                '1 or more elements are required for "path_name_type_list"'
@@ -129,7 +138,7 @@
        non_iterable_list = []
        self.path_name_type_list = []
        if not isinstance(path_name_type_list[0], Tuple):
        if not isinstance(path_name_type_list[0], (Tuple, List)):
            path = path_name_type_list[0]
            name = path_name_type_list[1]
            _type = path_name_type_list[2]
@@ -227,13 +236,9 @@
                name = self.path_name_type_list[i][1]
                _type = self.path_name_type_list[i][2]
                if _type == "sound":
                    audio_type = os.path.basename(value).split(".")[-1].lower()
                    if audio_type not in SUPPORT_AUDIO_TYPE_SETS:
                        raise NotImplementedError(
                            f'Not supported audio type: {audio_type}')
                    if audio_type == "pcm":
                        _type = "pcm"
                   audio_type = os.path.basename(value).lower()
                   if audio_type.rfind(".pcm") >= 0:
                       _type = "pcm"
                func = DATA_TYPES[_type]
                array = func(value)
                if self.fs is not None and (name == "speech" or name == "ref_speech"):
@@ -247,7 +252,7 @@
                        
                if _type == "sound":
                    if self.mc:
                        data[name] = array.transpose(0, 1)
                        data[name] = array.transpose((1, 0))
                    else:
                        data[name] = array[0]
                else:
@@ -335,11 +340,8 @@
                # 2.a. Load data streamingly
                for value, (path, name, _type) in zip(values, self.path_name_type_list):
                    if _type == "sound":
                        audio_type = os.path.basename(value).split(".")[-1].lower()
                        if audio_type not in SUPPORT_AUDIO_TYPE_SETS:
                            raise NotImplementedError(
                                f'Not supported audio type: {audio_type}')
                        if audio_type == "pcm":
                        audio_type = os.path.basename(value).lower()
                        if audio_type.rfind(".pcm") >= 0:
                            _type = "pcm"
                    func = DATA_TYPES[_type]
                    # Load entry
@@ -354,7 +356,7 @@
                            array = array.numpy()
                    if _type == "sound":
                        if self.mc:
                            data[name] = array.transpose(0, 1)
                            data[name] = array.transpose((1, 0))
                        else:
                            data[name] = array[0]
                    else:
@@ -391,3 +393,4 @@
        if count == 0:
            raise RuntimeError("No iteration")