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171 lines
5.1 KiB
171 lines
5.1 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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from typing import List
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import numpy as np
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from numpy import ndarray as array
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from ..backends import depth_convert
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from ..utils import ParameterError
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__all__ = [
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'depth_augment',
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'spect_augment',
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'random_crop1d',
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'random_crop2d',
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'adaptive_spect_augment',
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]
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def randint(high: int) -> int:
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"""Generate one random integer in range [0 high)
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This is a helper function for random data augmentaiton
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"""
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return int(np.random.randint(0, high=high))
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def rand() -> float:
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"""Generate one floating-point number in range [0 1)
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This is a helper function for random data augmentaiton
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"""
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return float(np.random.rand(1))
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def depth_augment(y: array,
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choices: List=['int8', 'int16'],
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probs: List[float]=[0.5, 0.5]) -> array:
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""" Audio depth augmentation
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Do audio depth augmentation to simulate the distortion brought by quantization.
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"""
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assert len(probs) == len(
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choices
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), 'number of choices {} must be equal to size of probs {}'.format(
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len(choices), len(probs))
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depth = np.random.choice(choices, p=probs)
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src_depth = y.dtype
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y1 = depth_convert(y, depth)
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y2 = depth_convert(y1, src_depth)
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return y2
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def adaptive_spect_augment(spect: array, tempo_axis: int=0,
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level: float=0.1) -> array:
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"""Do adpative spectrogram augmentation
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The level of the augmentation is gowern by the paramter level,
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ranging from 0 to 1, with 0 represents no augmentation。
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"""
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assert spect.ndim == 2., 'only supports 2d tensor or numpy array'
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if tempo_axis == 0:
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nt, nf = spect.shape
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else:
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nf, nt = spect.shape
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time_mask_width = int(nt * level * 0.5)
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freq_mask_width = int(nf * level * 0.5)
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num_time_mask = int(10 * level)
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num_freq_mask = int(10 * level)
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if tempo_axis == 0:
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for _ in range(num_time_mask):
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start = randint(nt - time_mask_width)
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spect[start:start + time_mask_width, :] = 0
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for _ in range(num_freq_mask):
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start = randint(nf - freq_mask_width)
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spect[:, start:start + freq_mask_width] = 0
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else:
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for _ in range(num_time_mask):
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start = randint(nt - time_mask_width)
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spect[:, start:start + time_mask_width] = 0
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for _ in range(num_freq_mask):
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start = randint(nf - freq_mask_width)
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spect[start:start + freq_mask_width, :] = 0
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return spect
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def spect_augment(spect: array,
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tempo_axis: int=0,
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max_time_mask: int=3,
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max_freq_mask: int=3,
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max_time_mask_width: int=30,
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max_freq_mask_width: int=20) -> array:
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"""Do spectrogram augmentation in both time and freq axis
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Reference:
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"""
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assert spect.ndim == 2., 'only supports 2d tensor or numpy array'
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if tempo_axis == 0:
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nt, nf = spect.shape
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else:
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nf, nt = spect.shape
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num_time_mask = randint(max_time_mask)
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num_freq_mask = randint(max_freq_mask)
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time_mask_width = randint(max_time_mask_width)
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freq_mask_width = randint(max_freq_mask_width)
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if tempo_axis == 0:
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for _ in range(num_time_mask):
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start = randint(nt - time_mask_width)
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spect[start:start + time_mask_width, :] = 0
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for _ in range(num_freq_mask):
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start = randint(nf - freq_mask_width)
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spect[:, start:start + freq_mask_width] = 0
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else:
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for _ in range(num_time_mask):
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start = randint(nt - time_mask_width)
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spect[:, start:start + time_mask_width] = 0
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for _ in range(num_freq_mask):
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start = randint(nf - freq_mask_width)
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spect[start:start + freq_mask_width, :] = 0
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return spect
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def random_crop1d(y: array, crop_len: int) -> array:
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""" Do random cropping on 1d input signal
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The input is a 1d signal, typically a sound waveform
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"""
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if y.ndim != 1:
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'only accept 1d tensor or numpy array'
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n = len(y)
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idx = randint(n - crop_len)
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return y[idx:idx + crop_len]
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def random_crop2d(s: array, crop_len: int, tempo_axis: int=0) -> array:
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""" Do random cropping for 2D array, typically a spectrogram.
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The cropping is done in temporal direction on the time-freq input signal.
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"""
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if tempo_axis >= s.ndim:
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raise ParameterError('axis out of range')
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n = s.shape[tempo_axis]
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idx = randint(high=n - crop_len)
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sli = [slice(None) for i in range(s.ndim)]
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sli[tempo_axis] = slice(idx, idx + crop_len)
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out = s[tuple(sli)]
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return out
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