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159 lines
6.6 KiB
159 lines
6.6 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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# Modified from espnet(https://github.com/espnet/espnet)
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"""Transformation module."""
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import copy
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import io
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import logging
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from collections import OrderedDict
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from collections.abc import Sequence
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from inspect import signature
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import yaml
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from paddlespeech.s2t.utils.dynamic_import import dynamic_import
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import_alias = dict(
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identity="paddlespeech.s2t.transform.transform_interface:Identity",
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time_warp="paddlespeech.s2t.transform.spec_augment:TimeWarp",
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time_mask="paddlespeech.s2t.transform.spec_augment:TimeMask",
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freq_mask="paddlespeech.s2t.transform.spec_augment:FreqMask",
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spec_augment="paddlespeech.s2t.transform.spec_augment:SpecAugment",
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speed_perturbation="paddlespeech.s2t.transform.perturb:SpeedPerturbation",
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volume_perturbation="paddlespeech.s2t.transform.perturb:VolumePerturbation",
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noise_injection="paddlespeech.s2t.transform.perturb:NoiseInjection",
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bandpass_perturbation="paddlespeech.s2t.transform.perturb:BandpassPerturbation",
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rir_convolve="paddlespeech.s2t.transform.perturb:RIRConvolve",
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delta="paddlespeech.s2t.transform.add_deltas:AddDeltas",
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cmvn="paddlespeech.s2t.transform.cmvn:CMVN",
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utterance_cmvn="paddlespeech.s2t.transform.cmvn:UtteranceCMVN",
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fbank="paddlespeech.s2t.transform.spectrogram:LogMelSpectrogram",
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spectrogram="paddlespeech.s2t.transform.spectrogram:Spectrogram",
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stft="paddlespeech.s2t.transform.spectrogram:Stft",
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istft="paddlespeech.s2t.transform.spectrogram:IStft",
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stft2fbank="paddlespeech.s2t.transform.spectrogram:Stft2LogMelSpectrogram",
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wpe="paddlespeech.s2t.transform.wpe:WPE",
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channel_selector="paddlespeech.s2t.transform.channel_selector:ChannelSelector",
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fbank_kaldi="paddlespeech.s2t.transform.spectrogram:LogMelSpectrogramKaldi",
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cmvn_json="paddlespeech.s2t.transform.cmvn:GlobalCMVN"
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)
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class Transformation():
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"""Apply some functions to the mini-batch
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Examples:
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>>> kwargs = {"process": [{"type": "fbank",
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... "n_mels": 80,
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... "fs": 16000},
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... {"type": "cmvn",
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... "stats": "data/train/cmvn.ark",
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... "norm_vars": True},
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... {"type": "delta", "window": 2, "order": 2}]}
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>>> transform = Transformation(kwargs)
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>>> bs = 10
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>>> xs = [np.random.randn(100, 80).astype(np.float32)
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... for _ in range(bs)]
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>>> xs = transform(xs)
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"""
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def __init__(self, conffile=None):
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if conffile is not None:
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if isinstance(conffile, dict):
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self.conf = copy.deepcopy(conffile)
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else:
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with io.open(conffile, encoding="utf-8") as f:
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self.conf = yaml.safe_load(f)
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assert isinstance(self.conf, dict), type(self.conf)
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else:
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self.conf = {"mode": "sequential", "process": []}
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self.functions = OrderedDict()
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if self.conf.get("mode", "sequential") == "sequential":
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for idx, process in enumerate(self.conf["process"]):
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assert isinstance(process, dict), type(process)
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opts = dict(process)
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process_type = opts.pop("type")
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class_obj = dynamic_import(process_type, import_alias)
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# TODO(karita): assert issubclass(class_obj, TransformInterface)
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try:
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self.functions[idx] = class_obj(**opts)
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except TypeError:
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try:
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signa = signature(class_obj)
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except ValueError:
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# Some function, e.g. built-in function, are failed
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pass
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else:
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logging.error("Expected signature: {}({})".format(
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class_obj.__name__, signa))
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raise
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else:
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raise NotImplementedError(
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"Not supporting mode={}".format(self.conf["mode"]))
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def __repr__(self):
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rep = "\n" + "\n".join(" {}: {}".format(k, v)
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for k, v in self.functions.items())
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return "{}({})".format(self.__class__.__name__, rep)
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def __call__(self, xs, uttid_list=None, **kwargs):
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"""Return new mini-batch
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:param Union[Sequence[np.ndarray], np.ndarray] xs:
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:param Union[Sequence[str], str] uttid_list:
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:return: batch:
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:rtype: List[np.ndarray]
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"""
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if not isinstance(xs, Sequence):
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is_batch = False
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xs = [xs]
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else:
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is_batch = True
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if isinstance(uttid_list, str):
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uttid_list = [uttid_list for _ in range(len(xs))]
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if self.conf.get("mode", "sequential") == "sequential":
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for idx in range(len(self.conf["process"])):
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func = self.functions[idx]
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# TODO(karita): use TrainingTrans and UttTrans to check __call__ args
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# Derive only the args which the func has
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try:
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param = signature(func).parameters
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except ValueError:
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# Some function, e.g. built-in function, are failed
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param = {}
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_kwargs = {k: v for k, v in kwargs.items() if k in param}
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try:
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if uttid_list is not None and "uttid" in param:
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xs = [
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func(x, u, **_kwargs)
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for x, u in zip(xs, uttid_list)
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]
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else:
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xs = [func(x, **_kwargs) for x in xs]
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except Exception:
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logging.fatal("Catch a exception from {}th func: {}".format(
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idx, func))
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raise
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else:
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raise NotImplementedError(
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"Not supporting mode={}".format(self.conf["mode"]))
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if is_batch:
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return xs
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else:
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return xs[0]
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