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168 lines
6.7 KiB
168 lines
6.7 KiB
# Copyright (c) 2021 PaddlePaddle Authors. All Rights Reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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"""Contains the data augmentation pipeline."""
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import json
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import numpy as np
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from deepspeech.frontend.augmentor.impulse_response import ImpulseResponseAugmentor
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from deepspeech.frontend.augmentor.noise_perturb import NoisePerturbAugmentor
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from deepspeech.frontend.augmentor.online_bayesian_normalization import \
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OnlineBayesianNormalizationAugmentor
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from deepspeech.frontend.augmentor.resample import ResampleAugmentor
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from deepspeech.frontend.augmentor.shift_perturb import ShiftPerturbAugmentor
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from deepspeech.frontend.augmentor.spec_augment import SpecAugmentor
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from deepspeech.frontend.augmentor.speed_perturb import SpeedPerturbAugmentor
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from deepspeech.frontend.augmentor.volume_perturb import VolumePerturbAugmentor
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class AugmentationPipeline():
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"""Build a pre-processing pipeline with various augmentation models.Such a
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data augmentation pipeline is oftern leveraged to augment the training
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samples to make the model invariant to certain types of perturbations in the
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real world, improving model's generalization ability.
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The pipeline is built according the the augmentation configuration in json
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string, e.g.
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.. code-block::
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[ {
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"type": "noise",
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"params": {"min_snr_dB": 10,
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"max_snr_dB": 20,
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"noise_manifest_path": "datasets/manifest.noise"},
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"prob": 0.0
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},
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{
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"type": "speed",
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"params": {"min_speed_rate": 0.9,
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"max_speed_rate": 1.1},
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"prob": 1.0
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},
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{
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"type": "shift",
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"params": {"min_shift_ms": -5,
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"max_shift_ms": 5},
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"prob": 1.0
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},
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{
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"type": "volume",
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"params": {"min_gain_dBFS": -10,
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"max_gain_dBFS": 10},
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"prob": 0.0
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},
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{
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"type": "bayesian_normal",
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"params": {"target_db": -20,
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"prior_db": -20,
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"prior_samples": 100},
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"prob": 0.0
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}
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]
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This augmentation configuration inserts two augmentation models
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into the pipeline, with one is VolumePerturbAugmentor and the other
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SpeedPerturbAugmentor. "prob" indicates the probability of the current
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augmentor to take effect. If "prob" is zero, the augmentor does not take
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effect.
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:param augmentation_config: Augmentation configuration in json string.
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:type augmentation_config: str
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:param random_seed: Random seed.
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:type random_seed: int
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:raises ValueError: If the augmentation json config is in incorrect format".
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"""
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def __init__(self, augmentation_config: str, random_seed=0):
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self._rng = np.random.RandomState(random_seed)
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self._spec_types = ('specaug')
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self._augmentors, self._rates = self._parse_pipeline_from(
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augmentation_config, 'audio')
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self._spec_augmentors, self._spec_rates = self._parse_pipeline_from(
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augmentation_config, 'feature')
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def transform_audio(self, audio_segment):
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"""Run the pre-processing pipeline for data augmentation.
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Note that this is an in-place transformation.
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:param audio_segment: Audio segment to process.
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:type audio_segment: AudioSegmenet|SpeechSegment
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"""
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for augmentor, rate in zip(self._augmentors, self._rates):
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if self._rng.uniform(0., 1.) < rate:
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augmentor.transform_audio(audio_segment)
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def transform_feature(self, spec_segment):
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"""spectrogram augmentation.
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Args:
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spec_segment (np.ndarray): audio feature, (D, T).
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"""
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for augmentor, rate in zip(self._spec_augmentors, self._spec_rates):
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if self._rng.uniform(0., 1.) < rate:
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spec_segment = augmentor.transform_feature(spec_segment)
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return spec_segment
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def _parse_pipeline_from(self, config_json, aug_type='audio'):
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"""Parse the config json to build a augmentation pipelien."""
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assert aug_type in ('audio', 'feature'), aug_type
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try:
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configs = json.loads(config_json)
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audio_confs = []
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feature_confs = []
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for config in configs:
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if config["type"] in self._spec_types:
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feature_confs.append(config)
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else:
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audio_confs.append(config)
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if aug_type == 'audio':
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aug_confs = audio_confs
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elif aug_type == 'feature':
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aug_confs = feature_confs
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augmentors = [
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self._get_augmentor(config["type"], config["params"])
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for config in aug_confs
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]
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rates = [config["prob"] for config in aug_confs]
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except Exception as e:
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raise ValueError("Failed to parse the augmentation config json: "
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"%s" % str(e))
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return augmentors, rates
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def _get_augmentor(self, augmentor_type, params):
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"""Return an augmentation model by the type name, and pass in params."""
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if augmentor_type == "volume":
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return VolumePerturbAugmentor(self._rng, **params)
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elif augmentor_type == "shift":
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return ShiftPerturbAugmentor(self._rng, **params)
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elif augmentor_type == "speed":
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return SpeedPerturbAugmentor(self._rng, **params)
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elif augmentor_type == "resample":
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return ResampleAugmentor(self._rng, **params)
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elif augmentor_type == "bayesian_normal":
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return OnlineBayesianNormalizationAugmentor(self._rng, **params)
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elif augmentor_type == "noise":
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return NoisePerturbAugmentor(self._rng, **params)
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elif augmentor_type == "impulse":
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return ImpulseResponseAugmentor(self._rng, **params)
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elif augmentor_type == "specaug":
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return SpecAugmentor(self._rng, **params)
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else:
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raise ValueError("Unknown augmentor type [%s]." % augmentor_type)
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