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paddlepaddle--paddle/python/paddle/audio/datasets/esc50.py
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2026-07-13 12:40:42 +08:00

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# Copyright (c) 2021 PaddlePaddle Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from __future__ import annotations
import os
from typing import TYPE_CHECKING, Any, Literal, NamedTuple, TypeAlias
from paddle.dataset.common import DATA_HOME
from paddle.utils import download
from .dataset import AudioClassificationDataset
if TYPE_CHECKING:
_ModeLiteral: TypeAlias = Literal[
'train',
'dev',
]
_FeatTypeLiteral: TypeAlias = Literal[
'raw',
'melspectrogram',
'mfcc',
'logmelspectrogram',
'spectrogram',
]
__all__ = []
class ESC50(AudioClassificationDataset):
"""
The ESC-50 dataset is a labeled collection of 2000 environmental audio recordings
suitable for benchmarking methods of environmental sound classification. The dataset
consists of 5-second-long recordings organized into 50 semantical classes (with
40 examples per class)
Reference:
ESC: Dataset for Environmental Sound Classification
http://dx.doi.org/10.1145/2733373.2806390
Args:
mode (str, optional): It identifies the dataset mode (train or dev). Default:train.
split (int, optional): It specify the fold of dev dataset. Default:1.
feat_type (str, optional): It identifies the feature type that user wants to extract of an audio file. Default:raw.
archive(dict, optional): it tells where to download the audio archive. Default:None.
Returns:
:ref:`api_paddle_io_Dataset`. An instance of ESC50 dataset.
Examples:
.. code-block:: pycon
>>> # doctest: +TIMEOUT(60)
>>> import paddle
>>> esc50_dataset = paddle.audio.datasets.ESC50(
... mode='dev',
... feat_type='raw',
... )
>>> for idx in range(5):
... audio, label = esc50_dataset[idx]
... # do something with audio, label
... print(audio.shape, label)
... # [audio_data_length] , label_id
paddle.Size([220500]) 0
paddle.Size([220500]) 14
paddle.Size([220500]) 36
paddle.Size([220500]) 36
paddle.Size([220500]) 19
>>> esc50_dataset = paddle.audio.datasets.ESC50(
... mode='dev',
... feat_type='mfcc',
... n_mfcc=40,
... )
>>> for idx in range(5):
... audio, label = esc50_dataset[idx]
... # do something with mfcc feature, label
... print(audio.shape, label)
... # [feature_dim, length] , label_id
paddle.Size([40, 1723]) 0
paddle.Size([40, 1723]) 14
paddle.Size([40, 1723]) 36
paddle.Size([40, 1723]) 36
paddle.Size([40, 1723]) 19
"""
archive: dict[str, str] = {
'url': 'https://paddleaudio.bj.bcebos.com/datasets/ESC-50-master.zip',
'md5': '7771e4b9d86d0945acce719c7a59305a',
}
label_list: list[str] = [
# Animals
'Dog',
'Rooster',
'Pig',
'Cow',
'Frog',
'Cat',
'Hen',
'Insects (flying)',
'Sheep',
'Crow',
# Natural soundscapes & water sounds
'Rain',
'Sea waves',
'Crackling fire',
'Crickets',
'Chirping birds',
'Water drops',
'Wind',
'Pouring water',
'Toilet flush',
'Thunderstorm',
# Human, non-speech sounds
'Crying baby',
'Sneezing',
'Clapping',
'Breathing',
'Coughing',
'Footsteps',
'Laughing',
'Brushing teeth',
'Snoring',
'Drinking, sipping',
# Interior/domestic sounds
'Door knock',
'Mouse click',
'Keyboard typing',
'Door, wood creaks',
'Can opening',
'Washing machine',
'Vacuum cleaner',
'Clock alarm',
'Clock tick',
'Glass breaking',
# Exterior/urban noises
'Helicopter',
'Chainsaw',
'Siren',
'Car horn',
'Engine',
'Train',
'Church bells',
'Airplane',
'Fireworks',
'Hand saw',
]
meta: str = os.path.join('ESC-50-master', 'meta', 'esc50.csv')
audio_path: str = os.path.join('ESC-50-master', 'audio')
class meta_info(NamedTuple):
filename: str
fold: str
target: str
category: str
esc10: str
src_file: str
take: str
def __init__(
self,
mode: _ModeLiteral = 'train',
split: int = 1,
feat_type: _FeatTypeLiteral = 'raw',
archive: dict[str, str] | None = None,
**kwargs: Any,
) -> None:
assert split in range(1, 6), (
f'The selected split should be integer, and 1 <= split <= 5, but got {split}'
)
if archive is not None:
self.archive = archive
files, labels = self._get_data(mode, split)
super().__init__(
files=files, labels=labels, feat_type=feat_type, **kwargs
)
def _get_meta_info(self) -> list[meta_info]:
ret = []
with open(os.path.join(DATA_HOME, self.meta), 'r') as rf:
for line in rf.readlines()[1:]:
ret.append(self.meta_info(*line.strip().split(',')))
return ret
def _get_data(
self, mode: _ModeLiteral, split: int
) -> tuple[list[str], list[int]]:
if not os.path.isdir(
os.path.join(DATA_HOME, self.audio_path)
) or not os.path.isfile(os.path.join(DATA_HOME, self.meta)):
download.get_path_from_url(
self.archive['url'],
DATA_HOME,
self.archive['md5'],
decompress=True,
)
meta_info = self._get_meta_info()
files = []
labels = []
for sample in meta_info:
filename, fold, target, _, _, _, _ = sample
if mode == 'train' and int(fold) != split:
files.append(os.path.join(DATA_HOME, self.audio_path, filename))
labels.append(int(target))
if mode != 'train' and int(fold) == split:
files.append(os.path.join(DATA_HOME, self.audio_path, filename))
labels.append(int(target))
return files, labels