conex / espnet2 /train /dataset.py
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from abc import ABC
from abc import abstractmethod
import collections
import copy
import functools
import logging
import numbers
import re
from typing import Any
from typing import Callable
from typing import Collection
from typing import Dict
from typing import Mapping
from typing import Tuple
from typing import Union
import h5py
import humanfriendly
import kaldiio
import numpy as np
import torch
from torch.utils.data.dataset import Dataset
from typeguard import check_argument_types
from typeguard import check_return_type
from espnet2.fileio.npy_scp import NpyScpReader
from espnet2.fileio.rand_gen_dataset import FloatRandomGenerateDataset
from espnet2.fileio.rand_gen_dataset import IntRandomGenerateDataset
from espnet2.fileio.read_text import load_num_sequence_text
from espnet2.fileio.read_text import read_2column_text
from espnet2.fileio.rttm import RttmReader
from espnet2.fileio.sound_scp import SoundScpReader
from espnet2.utils.sized_dict import SizedDict
class AdapterForSoundScpReader(collections.abc.Mapping):
def __init__(self, loader, dtype=None):
assert check_argument_types()
self.loader = loader
self.dtype = dtype
self.rate = None
def keys(self):
return self.loader.keys()
def __len__(self):
return len(self.loader)
def __iter__(self):
return iter(self.loader)
def __getitem__(self, key: str) -> np.ndarray:
retval = self.loader[key]
if isinstance(retval, tuple):
assert len(retval) == 2, len(retval)
if isinstance(retval[0], int) and isinstance(retval[1], np.ndarray):
# sound scp case
rate, array = retval
elif isinstance(retval[0], int) and isinstance(retval[1], np.ndarray):
# Extended ark format case
array, rate = retval
else:
raise RuntimeError(
f"Unexpected type: {type(retval[0])}, {type(retval[1])}"
)
if self.rate is not None and self.rate != rate:
raise RuntimeError(
f"Sampling rates are mismatched: {self.rate} != {rate}"
)
self.rate = rate
# Multichannel wave fie
# array: (NSample, Channel) or (Nsample)
if self.dtype is not None:
array = array.astype(self.dtype)
else:
# Normal ark case
assert isinstance(retval, np.ndarray), type(retval)
array = retval
if self.dtype is not None:
array = array.astype(self.dtype)
assert isinstance(array, np.ndarray), type(array)
return array
class H5FileWrapper:
def __init__(self, path: str):
self.path = path
self.h5_file = h5py.File(path, "r")
def __repr__(self) -> str:
return str(self.h5_file)
def __len__(self) -> int:
return len(self.h5_file)
def __iter__(self):
return iter(self.h5_file)
def __getitem__(self, key) -> np.ndarray:
value = self.h5_file[key]
return value[()]
def sound_loader(path, float_dtype=None):
# The file is as follows:
# utterance_id_A /some/where/a.wav
# utterance_id_B /some/where/a.flac
# NOTE(kamo): SoundScpReader doesn't support pipe-fashion
# like Kaldi e.g. "cat a.wav |".
# NOTE(kamo): The audio signal is normalized to [-1,1] range.
loader = SoundScpReader(path, normalize=True, always_2d=False)
# SoundScpReader.__getitem__() returns Tuple[int, ndarray],
# but ndarray is desired, so Adapter class is inserted here
return AdapterForSoundScpReader(loader, float_dtype)
def kaldi_loader(path, float_dtype=None, max_cache_fd: int = 0):
loader = kaldiio.load_scp(path, max_cache_fd=max_cache_fd)
return AdapterForSoundScpReader(loader, float_dtype)
def rand_int_loader(filepath, loader_type):
# e.g. rand_int_3_10
try:
low, high = map(int, loader_type[len("rand_int_") :].split("_"))
except ValueError:
raise RuntimeError(f"e.g rand_int_3_10: but got {loader_type}")
return IntRandomGenerateDataset(filepath, low, high)
DATA_TYPES = {
"sound": dict(
func=sound_loader,
kwargs=["float_dtype"],
help="Audio format types which supported by sndfile wav, flac, etc."
"\n\n"
" utterance_id_a a.wav\n"
" utterance_id_b b.wav\n"
" ...",
),
"kaldi_ark": dict(
func=kaldi_loader,
kwargs=["max_cache_fd"],
help="Kaldi-ark file type."
"\n\n"
" utterance_id_A /some/where/a.ark:123\n"
" utterance_id_B /some/where/a.ark:456\n"
" ...",
),
"npy": dict(
func=NpyScpReader,
kwargs=[],
help="Npy file format."
"\n\n"
" utterance_id_A /some/where/a.npy\n"
" utterance_id_B /some/where/b.npy\n"
" ...",
),
"text_int": dict(
func=functools.partial(load_num_sequence_text, loader_type="text_int"),
kwargs=[],
help="A text file in which is written a sequence of interger numbers "
"separated by space."
"\n\n"
" utterance_id_A 12 0 1 3\n"
" utterance_id_B 3 3 1\n"
" ...",
),
"csv_int": dict(
func=functools.partial(load_num_sequence_text, loader_type="csv_int"),
kwargs=[],
help="A text file in which is written a sequence of interger numbers "
"separated by comma."
"\n\n"
" utterance_id_A 100,80\n"
" utterance_id_B 143,80\n"
" ...",
),
"text_float": dict(
func=functools.partial(load_num_sequence_text, loader_type="text_float"),
kwargs=[],
help="A text file in which is written a sequence of float numbers "
"separated by space."
"\n\n"
" utterance_id_A 12. 3.1 3.4 4.4\n"
" utterance_id_B 3. 3.12 1.1\n"
" ...",
),
"csv_float": dict(
func=functools.partial(load_num_sequence_text, loader_type="csv_float"),
kwargs=[],
help="A text file in which is written a sequence of float numbers "
"separated by comma."
"\n\n"
" utterance_id_A 12.,3.1,3.4,4.4\n"
" utterance_id_B 3.,3.12,1.1\n"
" ...",
),
"text": dict(
func=read_2column_text,
kwargs=[],
help="Return text as is. The text must be converted to ndarray "
"by 'preprocess'."
"\n\n"
" utterance_id_A hello world\n"
" utterance_id_B foo bar\n"
" ...",
),
"hdf5": dict(
func=H5FileWrapper,
kwargs=[],
help="A HDF5 file which contains arrays at the first level or the second level."
" >>> f = h5py.File('file.h5')\n"
" >>> array1 = f['utterance_id_A']\n"
" >>> array2 = f['utterance_id_B']\n",
),
"rand_float": dict(
func=FloatRandomGenerateDataset,
kwargs=[],
help="Generate random float-ndarray which has the given shapes "
"in the file."
"\n\n"
" utterance_id_A 3,4\n"
" utterance_id_B 10,4\n"
" ...",
),
"rand_int_\\d+_\\d+": dict(
func=rand_int_loader,
kwargs=["loader_type"],
help="e.g. 'rand_int_0_10'. Generate random int-ndarray which has the given "
"shapes in the path. "
"Give the lower and upper value by the file type. e.g. "
"rand_int_0_10 -> Generate integers from 0 to 10."
"\n\n"
" utterance_id_A 3,4\n"
" utterance_id_B 10,4\n"
" ...",
),
"rttm": dict(
func=RttmReader,
kwargs=[],
help="rttm file loader, currently support for speaker diarization"
"\n\n"
" SPEAKER file1 1 0 1023 <NA> <NA> spk1 <NA>"
" SPEAKER file1 2 4000 3023 <NA> <NA> spk2 <NA>"
" SPEAKER file1 3 500 4023 <NA> <NA> spk1 <NA>"
" END file1 <NA> 4023 <NA> <NA> <NA> <NA>"
" ...",
),
}
class AbsDataset(Dataset, ABC):
@abstractmethod
def has_name(self, name) -> bool:
raise NotImplementedError
@abstractmethod
def names(self) -> Tuple[str, ...]:
raise NotImplementedError
@abstractmethod
def __getitem__(self, uid) -> Tuple[Any, Dict[str, np.ndarray]]:
raise NotImplementedError
class ESPnetDataset(AbsDataset):
"""Pytorch Dataset class for ESPNet.
Examples:
>>> dataset = ESPnetDataset([('wav.scp', 'input', 'sound'),
... ('token_int', 'output', 'text_int')],
... )
... uttid, data = dataset['uttid']
{'input': per_utt_array, 'output': per_utt_array}
"""
def __init__(
self,
path_name_type_list: Collection[Tuple[str, str, str]],
preprocess: Callable[
[str, Dict[str, np.ndarray]], Dict[str, np.ndarray]
] = None,
float_dtype: str = "float32",
int_dtype: str = "long",
max_cache_size: Union[float, int, str] = 0.0,
max_cache_fd: int = 0,
):
assert check_argument_types()
if len(path_name_type_list) == 0:
raise ValueError(
'1 or more elements are required for "path_name_type_list"'
)
path_name_type_list = copy.deepcopy(path_name_type_list)
self.preprocess = preprocess
self.float_dtype = float_dtype
self.int_dtype = int_dtype
self.max_cache_fd = max_cache_fd
self.loader_dict = {}
self.debug_info = {}
for path, name, _type in path_name_type_list:
if name in self.loader_dict:
raise RuntimeError(f'"{name}" is duplicated for data-key')
loader = self._build_loader(path, _type)
self.loader_dict[name] = loader
self.debug_info[name] = path, _type
if len(self.loader_dict[name]) == 0:
raise RuntimeError(f"{path} has no samples")
# TODO(kamo): Should check consistency of each utt-keys?
if isinstance(max_cache_size, str):
max_cache_size = humanfriendly.parse_size(max_cache_size)
self.max_cache_size = max_cache_size
if max_cache_size > 0:
self.cache = SizedDict(shared=True)
else:
self.cache = None
def _build_loader(
self, path: str, loader_type: str
) -> Mapping[str, Union[np.ndarray, torch.Tensor, str, numbers.Number]]:
"""Helper function to instantiate Loader.
Args:
path: The file path
loader_type: loader_type. sound, npy, text_int, text_float, etc
"""
for key, dic in DATA_TYPES.items():
# e.g. loader_type="sound"
# -> return DATA_TYPES["sound"]["func"](path)
if re.match(key, loader_type):
kwargs = {}
for key2 in dic["kwargs"]:
if key2 == "loader_type":
kwargs["loader_type"] = loader_type
elif key2 == "float_dtype":
kwargs["float_dtype"] = self.float_dtype
elif key2 == "int_dtype":
kwargs["int_dtype"] = self.int_dtype
elif key2 == "max_cache_fd":
kwargs["max_cache_fd"] = self.max_cache_fd
else:
raise RuntimeError(f"Not implemented keyword argument: {key2}")
func = dic["func"]
try:
return func(path, **kwargs)
except Exception:
if hasattr(func, "__name__"):
name = func.__name__
else:
name = str(func)
logging.error(f"An error happend with {name}({path})")
raise
else:
raise RuntimeError(f"Not supported: loader_type={loader_type}")
def has_name(self, name) -> bool:
return name in self.loader_dict
def names(self) -> Tuple[str, ...]:
return tuple(self.loader_dict)
def __iter__(self):
return iter(next(iter(self.loader_dict.values())))
def __repr__(self):
_mes = self.__class__.__name__
_mes += "("
for name, (path, _type) in self.debug_info.items():
_mes += f'\n {name}: {{"path": "{path}", "type": "{_type}"}}'
_mes += f"\n preprocess: {self.preprocess})"
return _mes
def __getitem__(self, uid: Union[str, int]) -> Tuple[str, Dict[str, np.ndarray]]:
assert check_argument_types()
# Change integer-id to string-id
if isinstance(uid, int):
d = next(iter(self.loader_dict.values()))
uid = list(d)[uid]
if self.cache is not None and uid in self.cache:
data = self.cache[uid]
return uid, data
data = {}
# 1. Load data from each loaders
for name, loader in self.loader_dict.items():
try:
value = loader[uid]
if isinstance(value, (list, tuple)):
value = np.array(value)
if not isinstance(
value, (np.ndarray, torch.Tensor, str, numbers.Number)
):
raise TypeError(
f"Must be ndarray, torch.Tensor, str or Number: {type(value)}"
)
except Exception:
path, _type = self.debug_info[name]
logging.error(
f"Error happened with path={path}, type={_type}, id={uid}"
)
raise
# torch.Tensor is converted to ndarray
if isinstance(value, torch.Tensor):
value = value.numpy()
elif isinstance(value, numbers.Number):
value = np.array([value])
data[name] = value
# 2. [Option] Apply preprocessing
# e.g. espnet2.train.preprocessor:CommonPreprocessor
if self.preprocess is not None:
data = self.preprocess(uid, data)
# 3. Force data-precision
for name in data:
value = data[name]
if not isinstance(value, np.ndarray):
raise RuntimeError(
f"All values must be converted to np.ndarray object "
f'by preprocessing, but "{name}" is still {type(value)}.'
)
# Cast to desired type
if value.dtype.kind == "f":
value = value.astype(self.float_dtype)
elif value.dtype.kind == "i":
value = value.astype(self.int_dtype)
else:
raise NotImplementedError(f"Not supported dtype: {value.dtype}")
data[name] = value
if self.cache is not None and self.cache.size < self.max_cache_size:
self.cache[uid] = data
retval = uid, data
assert check_return_type(retval)
return retval