import bisect
import random
from typing import Optional, Sequence, Tuple, TypeVar, Union
import numpy as np
import torch
from lhotse import CutSet
from lhotse.utils import Pathlike
__all__ = [
'GlobalMVN',
'SpecAugment',
'RandomizedSmoothing'
]
[docs]class GlobalMVN(torch.nn.Module):
"""Apply global mean and variance normalization"""
[docs] def __init__(self, feature_dim: int):
super().__init__()
self.feature_dim = feature_dim
self.register_buffer("norm_means", torch.zeros(feature_dim))
self.register_buffer("norm_stds", torch.ones(feature_dim))
[docs] @classmethod
def from_cuts(cls, cuts: CutSet, max_cuts: Optional[int] = None) -> "GlobalMVN":
stats = cuts.compute_global_feature_stats(max_cuts=max_cuts)
stats = {name: torch.as_tensor(value) for name, value in stats.items()}
feature_dim, = stats["norm_means"].shape
global_mvn = cls(feature_dim)
global_mvn.load_state_dict(stats)
return global_mvn
[docs] @classmethod
def from_file(cls, stats_file: Pathlike) -> "GlobalMVN":
stats = torch.load(stats_file)
feature_dim, = stats["norm_means"].shape
global_mvn = cls(feature_dim)
global_mvn.load_state_dict(stats)
return global_mvn
[docs] def to_file(self, stats_file: Pathlike):
torch.save(self.state_dict(), stats_file)
[docs] def forward(self, features: torch.Tensor, *args, **kwargs) -> torch.Tensor:
return (features - self.norm_means) / self.norm_stds
[docs] def inverse(self, features: torch.Tensor) -> torch.Tensor:
return features * self.norm_stds + self.norm_means
[docs]class RandomizedSmoothing(torch.nn.Module):
"""
Randomized smoothing - gaussian noise added to an input waveform, or a batch of waveforms.
The summed audio is clipped to ``[-1.0, 1.0]`` before returning.
"""
[docs] def __init__(
self,
sigma: Union[float, Sequence[Tuple[int, float]]] = 0.1,
sample_sigma: bool = True,
p: float = 0.3,
):
"""
RandomizedSmoothing's constructor.
:param sigma: standard deviation of the gaussian noise. Either a constant float, or a schedule,
i.e. a list of tuples that specify which value to use from which step.
For example, ``[(0, 0.01), (1000, 0.1)]`` means that from steps 0-999, the sigma value
will be 0.01, and from step 1000 onwards, it will be 0.1.
:param sample_sigma: when ``False``, then sigma is used as the standard deviation in each forward step.
When ``True``, the standard deviation is sampled from a uniform distribution of
``[-sigma, sigma]`` for each forward step.
:param p: the probability of applying this transform.
"""
super().__init__()
self.sigma = sigma
self.sample_sigma = sample_sigma
self.p = p
self.step = 0
[docs] def forward(self, audio: torch.Tensor, *args, **kwargs) -> torch.Tensor:
# Determine the stddev value
if isinstance(self.sigma, float):
# Use a constant stddev value
sigma = self.sigma
else:
# Determine the right stddev value from a given schedule.
sigma = schedule_value_for_step(self.sigma, self.step)
self.step += 1
if self.sample_sigma:
# In this mode stddev is stochastic itself
# and is sampled from uniform distribution bounded by [-sigma, sigma] .
mask_shape = (audio.shape[0],) + tuple(1 for _ in audio.shape[1:])
# Sigma is of shape (batch_size, 1) - different for each noise example.
sigma = sigma * (2 * torch.rand(mask_shape) - 1)
# Create the random noise examples with identical sigma's.
noise = sigma * torch.randn_like(audio)
# Apply the transform with a probability p -> mask noise examples with probability 1 - p.
noise_mask = random_mask_along_batch_axis(noise, p=1.0 - self.p)
noise = noise * noise_mask
return torch.clip(audio + noise, min=-1.0, max=1.0)
[docs]class SpecAugment(torch.nn.Module):
"""
SpecAugment performs three augmentations:
- time warping of the feature matrix
- masking of ranges of features (frequency bands)
- masking of ranges of frames (time)
The current implementation works with batches, but processes each example separately
in a loop rather than simultaneously to achieve different augmentation parameters for
each example.
"""
[docs] def __init__(
self,
time_warp_factor: Optional[int] = 80,
num_feature_masks: int = 1,
features_mask_size: int = 13,
num_frame_masks: int = 1,
frames_mask_size: int = 70,
max_frames_mask_fraction: float = 0.2,
p=0.5,
):
"""
SpecAugment's constructor.
:param time_warp_factor: parameter for the time warping; larger values mean more warping.
Set to ``None``, or less than ``1``, to disable.
:param num_feature_masks: how many feature masks should be applied. Set to ``0`` to disable.
:param features_mask_size: the width of the feature mask (expressed in the number of masked feature bins).
This is the ``T`` parameter from the SpecAugment paper.
:param num_frame_masks: how many frame (temporal) masks should be applied. Set to ``0`` to disable.
:param frames_mask_size: the width of the frame (temporal) masks (expressed in the number of masked frames).
This is the ``F`` parameter from the SpecAugment paper.
:param max_frames_mask_fraction: limits the size of the frame (temporal) mask to this value times the length
of the utterance (or supervision segment).
This is the parameter denoted by ``p`` in the SpecAugment paper.
:param p: the probability of applying this transform.
It is different from ``p`` in the SpecAugment paper!
"""
super().__init__()
assert 0 <= p <= 1
assert num_feature_masks >= 0
assert num_frame_masks >= 0
assert features_mask_size > 0
assert frames_mask_size > 0
self.time_warp_factor = time_warp_factor
self.num_feature_masks = num_feature_masks
self.features_mask_size = features_mask_size
self.num_frame_masks = num_frame_masks
self.frames_mask_size = frames_mask_size
self.max_frames_mask_fraction = max_frames_mask_fraction
self.p = p
[docs] def forward(
self,
features: torch.Tensor,
supervision_segments: Optional[torch.IntTensor] = None,
*args, **kwargs
) -> torch.Tensor:
"""
Computes SpecAugment for a batch of feature matrices.
Since the batch will usually already be padded, the user can optionally
provide a ``supervision_segments`` tensor that will be used to apply SpecAugment
only to selected areas of the input. The format of this input is described below.
:param features: a batch of feature matrices with shape ``(B, T, F)``.
:param supervision_segments: an int tensor of shape ``(S, 3)``. ``S`` is the number of
supervision segments that exist in ``features`` -- there may be either
less or more than the batch size.
The second dimension encoder three kinds of information:
the sequence index of the corresponding feature matrix in `features`,
the start frame index, and the number of frames for each segment.
:return: a tensor of shape ``(T, F)``, or a batch of them with shape ``(B, T, F)``
"""
assert len(features.shape) == 3, 'SpecAugment only supports batches of ' \
'single-channel feature matrices.'
features = features.clone()
if supervision_segments is None:
# No supervisions - apply spec augment to full feature matrices.
for sequence_idx in range(features.size(0)):
features[sequence_idx] = self._forward_single(features[sequence_idx])
else:
# Supervisions provided - we will apply time warping only on the supervised areas.
for sequence_idx, start_frame, num_frames in supervision_segments:
end_frame = start_frame + num_frames
features[sequence_idx, start_frame: end_frame] = self._forward_single(
features[sequence_idx, start_frame: end_frame],
warp=True,
mask=False
)
# ... and then time-mask the full feature matrices. Note that in this mode,
# it might happen that masks are applied to different sequences/examples
# than the time warping.
for sequence_idx in range(features.size(0)):
features[sequence_idx] = self._forward_single(
features[sequence_idx],
warp=False,
mask=True
)
return features
def _forward_single(self, features: torch.Tensor, warp: bool = True, mask: bool = True) -> torch.Tensor:
"""
Apply SpecAugment to a single feature matrix of shape (T, F).
"""
if random.random() > self.p:
# Randomly choose whether this transform is applied
return features
if warp:
if self.time_warp_factor is not None and self.time_warp_factor >= 1:
features = time_warp(features, factor=self.time_warp_factor)
if mask:
from torchaudio.functional import mask_along_axis
mean = features.mean()
for _ in range(self.num_feature_masks):
features = mask_along_axis(
features.unsqueeze(0),
mask_param=self.features_mask_size,
mask_value=mean,
axis=2
).squeeze(0)
for _ in range(self.num_frame_masks):
max_mask_frames = min(self.frames_mask_size, self.max_frames_mask_fraction * features.size(0))
features = mask_along_axis(
features.unsqueeze(0),
mask_param=max_mask_frames,
mask_value=mean,
axis=1
).squeeze(0)
return features
def time_warp(features: torch.Tensor, factor: int) -> torch.Tensor:
"""
Time warping as described in the SpecAugment paper.
Implementation based on Espresso:
https://github.com/freewym/espresso/blob/master/espresso/tools/specaug_interpolate.py#L51
:param features: input tensor of shape ``(T, F)``
:param factor: time warping parameter.
:return: a warped tensor of shape ``(T, F)``
"""
t = features.size(0)
if t - factor <= factor + 1:
return features
center = np.random.randint(factor + 1, t - factor)
warped = np.random.randint(center - factor, center + factor + 1)
if warped == center:
return features
features = features.unsqueeze(0).unsqueeze(0)
left = torch.nn.functional.interpolate(
features[:, :, :center, :], size=(warped, features.size(3)),
mode="bicubic", align_corners=False,
)
right = torch.nn.functional.interpolate(
features[:, :, center:, :], size=(t - warped, features.size(3)),
mode="bicubic", align_corners=False,
)
return torch.cat((left, right), dim=2).squeeze(0).squeeze(0)
T = TypeVar('T')
def schedule_value_for_step(schedule: Sequence[Tuple[int, T]], step: int) -> T:
milestones, values = zip(*schedule)
assert milestones[0] <= step, f"Cannot determine the scheduled value for step {step} with schedule: {schedule}. " \
f"Did you forget to add the first part of the schedule " \
f"for steps below {milestones[0]}?"
idx = bisect.bisect_right(milestones, step) - 1
return values[idx]
def random_mask_along_batch_axis(tensor: torch.Tensor, p: float = 0.5) -> torch.Tensor:
"""
For a given tensor with shape (N, d1, d2, d3, ...), returns a mask with shape (N, 1, 1, 1, ...),
that randomly masks the samples in a batch.
E.g. for a 2D input matrix it looks like:
>>> [[0., 0., 0., ...],
... [1., 1., 1., ...],
... [0., 0., 0., ...]]
:param tensor: the input tensor.
:param p: the probability of masking an element.
"""
mask_shape = (tensor.shape[0],) + tuple(1 for _ in tensor.shape[1:])
mask = (torch.rand(mask_shape) > p).to(torch.float32)
return mask