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# coding=utf-8 | |
# Copyright 2023 The HuggingFace Inc. team and the librosa & torchaudio authors. | |
# | |
# 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. | |
""" | |
Audio processing functions to extract features from audio waveforms. This code is pure numpy to support all frameworks | |
and remove unnecessary dependencies. | |
""" | |
import warnings | |
from typing import Optional, Union | |
import numpy as np | |
def hertz_to_mel(freq: Union[float, np.ndarray], mel_scale: str = "htk") -> Union[float, np.ndarray]: | |
""" | |
Convert frequency from hertz to mels. | |
Args: | |
freq (`float` or `np.ndarray`): | |
The frequency, or multiple frequencies, in hertz (Hz). | |
mel_scale (`str`, *optional*, defaults to `"htk"`): | |
The mel frequency scale to use, `"htk"`, `"kaldi"` or `"slaney"`. | |
Returns: | |
`float` or `np.ndarray`: The frequencies on the mel scale. | |
""" | |
if mel_scale not in ["slaney", "htk", "kaldi"]: | |
raise ValueError('mel_scale should be one of "htk", "slaney" or "kaldi".') | |
if mel_scale == "htk": | |
return 2595.0 * np.log10(1.0 + (freq / 700.0)) | |
elif mel_scale == "kaldi": | |
return 1127.0 * np.log(1.0 + (freq / 700.0)) | |
min_log_hertz = 1000.0 | |
min_log_mel = 15.0 | |
logstep = 27.0 / np.log(6.4) | |
mels = 3.0 * freq / 200.0 | |
if isinstance(freq, np.ndarray): | |
log_region = freq >= min_log_hertz | |
mels[log_region] = min_log_mel + np.log(freq[log_region] / min_log_hertz) * logstep | |
elif freq >= min_log_hertz: | |
mels = min_log_mel + np.log(freq / min_log_hertz) * logstep | |
return mels | |
def mel_to_hertz(mels: Union[float, np.ndarray], mel_scale: str = "htk") -> Union[float, np.ndarray]: | |
""" | |
Convert frequency from mels to hertz. | |
Args: | |
mels (`float` or `np.ndarray`): | |
The frequency, or multiple frequencies, in mels. | |
mel_scale (`str`, *optional*, `"htk"`): | |
The mel frequency scale to use, `"htk"`, `"kaldi"` or `"slaney"`. | |
Returns: | |
`float` or `np.ndarray`: The frequencies in hertz. | |
""" | |
if mel_scale not in ["slaney", "htk", "kaldi"]: | |
raise ValueError('mel_scale should be one of "htk", "slaney" or "kaldi".') | |
if mel_scale == "htk": | |
return 700.0 * (np.power(10, mels / 2595.0) - 1.0) | |
elif mel_scale == "kaldi": | |
return 700.0 * (np.exp(mels / 1127.0) - 1.0) | |
min_log_hertz = 1000.0 | |
min_log_mel = 15.0 | |
logstep = np.log(6.4) / 27.0 | |
freq = 200.0 * mels / 3.0 | |
if isinstance(mels, np.ndarray): | |
log_region = mels >= min_log_mel | |
freq[log_region] = min_log_hertz * np.exp(logstep * (mels[log_region] - min_log_mel)) | |
elif mels >= min_log_mel: | |
freq = min_log_hertz * np.exp(logstep * (mels - min_log_mel)) | |
return freq | |
def _create_triangular_filter_bank(fft_freqs: np.ndarray, filter_freqs: np.ndarray) -> np.ndarray: | |
""" | |
Creates a triangular filter bank. | |
Adapted from *torchaudio* and *librosa*. | |
Args: | |
fft_freqs (`np.ndarray` of shape `(num_frequency_bins,)`): | |
Discrete frequencies of the FFT bins in Hz. | |
filter_freqs (`np.ndarray` of shape `(num_mel_filters,)`): | |
Center frequencies of the triangular filters to create, in Hz. | |
Returns: | |
`np.ndarray` of shape `(num_frequency_bins, num_mel_filters)` | |
""" | |
filter_diff = np.diff(filter_freqs) | |
slopes = np.expand_dims(filter_freqs, 0) - np.expand_dims(fft_freqs, 1) | |
down_slopes = -slopes[:, :-2] / filter_diff[:-1] | |
up_slopes = slopes[:, 2:] / filter_diff[1:] | |
return np.maximum(np.zeros(1), np.minimum(down_slopes, up_slopes)) | |
def mel_filter_bank( | |
num_frequency_bins: int, | |
num_mel_filters: int, | |
min_frequency: float, | |
max_frequency: float, | |
sampling_rate: int, | |
norm: Optional[str] = None, | |
mel_scale: str = "htk", | |
triangularize_in_mel_space: bool = False, | |
) -> np.ndarray: | |
""" | |
Creates a frequency bin conversion matrix used to obtain a mel spectrogram. This is called a *mel filter bank*, and | |
various implementation exist, which differ in the number of filters, the shape of the filters, the way the filters | |
are spaced, the bandwidth of the filters, and the manner in which the spectrum is warped. The goal of these | |
features is to approximate the non-linear human perception of the variation in pitch with respect to the frequency. | |
Different banks of mel filters were introduced in the literature. The following variations are supported: | |
- MFCC FB-20: introduced in 1980 by Davis and Mermelstein, it assumes a sampling frequency of 10 kHz and a speech | |
bandwidth of `[0, 4600]` Hz. | |
- MFCC FB-24 HTK: from the Cambridge HMM Toolkit (HTK) (1995) uses a filter bank of 24 filters for a speech | |
bandwidth of `[0, 8000]` Hz. This assumes sampling rate ≥ 16 kHz. | |
- MFCC FB-40: from the Auditory Toolbox for MATLAB written by Slaney in 1998, assumes a sampling rate of 16 kHz and | |
speech bandwidth of `[133, 6854]` Hz. This version also includes area normalization. | |
- HFCC-E FB-29 (Human Factor Cepstral Coefficients) of Skowronski and Harris (2004), assumes a sampling rate of | |
12.5 kHz and speech bandwidth of `[0, 6250]` Hz. | |
This code is adapted from *torchaudio* and *librosa*. Note that the default parameters of torchaudio's | |
`melscale_fbanks` implement the `"htk"` filters while librosa uses the `"slaney"` implementation. | |
Args: | |
num_frequency_bins (`int`): | |
Number of frequencies used to compute the spectrogram (should be the same as in `stft`). | |
num_mel_filters (`int`): | |
Number of mel filters to generate. | |
min_frequency (`float`): | |
Lowest frequency of interest in Hz. | |
max_frequency (`float`): | |
Highest frequency of interest in Hz. This should not exceed `sampling_rate / 2`. | |
sampling_rate (`int`): | |
Sample rate of the audio waveform. | |
norm (`str`, *optional*): | |
If `"slaney"`, divide the triangular mel weights by the width of the mel band (area normalization). | |
mel_scale (`str`, *optional*, defaults to `"htk"`): | |
The mel frequency scale to use, `"htk"`, `"kaldi"` or `"slaney"`. | |
triangularize_in_mel_space (`bool`, *optional*, defaults to `False`): | |
If this option is enabled, the triangular filter is applied in mel space rather than frequency space. This | |
should be set to `true` in order to get the same results as `torchaudio` when computing mel filters. | |
Returns: | |
`np.ndarray` of shape (`num_frequency_bins`, `num_mel_filters`): Triangular filter bank matrix. This is a | |
projection matrix to go from a spectrogram to a mel spectrogram. | |
""" | |
if norm is not None and norm != "slaney": | |
raise ValueError('norm must be one of None or "slaney"') | |
# center points of the triangular mel filters | |
mel_min = hertz_to_mel(min_frequency, mel_scale=mel_scale) | |
mel_max = hertz_to_mel(max_frequency, mel_scale=mel_scale) | |
mel_freqs = np.linspace(mel_min, mel_max, num_mel_filters + 2) | |
filter_freqs = mel_to_hertz(mel_freqs, mel_scale=mel_scale) | |
if triangularize_in_mel_space: | |
# frequencies of FFT bins in Hz, but filters triangularized in mel space | |
fft_bin_width = sampling_rate / (num_frequency_bins * 2) | |
fft_freqs = hertz_to_mel(fft_bin_width * np.arange(num_frequency_bins), mel_scale=mel_scale) | |
filter_freqs = mel_freqs | |
else: | |
# frequencies of FFT bins in Hz | |
fft_freqs = np.linspace(0, sampling_rate // 2, num_frequency_bins) | |
mel_filters = _create_triangular_filter_bank(fft_freqs, filter_freqs) | |
if norm is not None and norm == "slaney": | |
# Slaney-style mel is scaled to be approx constant energy per channel | |
enorm = 2.0 / (filter_freqs[2 : num_mel_filters + 2] - filter_freqs[:num_mel_filters]) | |
mel_filters *= np.expand_dims(enorm, 0) | |
if (mel_filters.max(axis=0) == 0.0).any(): | |
warnings.warn( | |
"At least one mel filter has all zero values. " | |
f"The value for `num_mel_filters` ({num_mel_filters}) may be set too high. " | |
f"Or, the value for `num_frequency_bins` ({num_frequency_bins}) may be set too low." | |
) | |
return mel_filters | |
def optimal_fft_length(window_length: int) -> int: | |
""" | |
Finds the best FFT input size for a given `window_length`. This function takes a given window length and, if not | |
already a power of two, rounds it up to the next power or two. | |
The FFT algorithm works fastest when the length of the input is a power of two, which may be larger than the size | |
of the window or analysis frame. For example, if the window is 400 samples, using an FFT input size of 512 samples | |
is more optimal than an FFT size of 400 samples. Using a larger FFT size does not affect the detected frequencies, | |
it simply gives a higher frequency resolution (i.e. the frequency bins are smaller). | |
""" | |
return 2 ** int(np.ceil(np.log2(window_length))) | |
def window_function( | |
window_length: int, | |
name: str = "hann", | |
periodic: bool = True, | |
frame_length: Optional[int] = None, | |
center: bool = True, | |
) -> np.ndarray: | |
""" | |
Returns an array containing the specified window. This window is intended to be used with `stft`. | |
The following window types are supported: | |
- `"boxcar"`: a rectangular window | |
- `"hamming"`: the Hamming window | |
- `"hann"`: the Hann window | |
- `"povey"`: the Povey window | |
Args: | |
window_length (`int`): | |
The length of the window in samples. | |
name (`str`, *optional*, defaults to `"hann"`): | |
The name of the window function. | |
periodic (`bool`, *optional*, defaults to `True`): | |
Whether the window is periodic or symmetric. | |
frame_length (`int`, *optional*): | |
The length of the analysis frames in samples. Provide a value for `frame_length` if the window is smaller | |
than the frame length, so that it will be zero-padded. | |
center (`bool`, *optional*, defaults to `True`): | |
Whether to center the window inside the FFT buffer. Only used when `frame_length` is provided. | |
Returns: | |
`np.ndarray` of shape `(window_length,)` or `(frame_length,)` containing the window. | |
""" | |
length = window_length + 1 if periodic else window_length | |
if name == "boxcar": | |
window = np.ones(length) | |
elif name in ["hamming", "hamming_window"]: | |
window = np.hamming(length) | |
elif name in ["hann", "hann_window"]: | |
window = np.hanning(length) | |
elif name in ["povey"]: | |
window = np.power(np.hanning(length), 0.85) | |
else: | |
raise ValueError(f"Unknown window function '{name}'") | |
if periodic: | |
window = window[:-1] | |
if frame_length is None: | |
return window | |
if window_length > frame_length: | |
raise ValueError( | |
f"Length of the window ({window_length}) may not be larger than frame_length ({frame_length})" | |
) | |
padded_window = np.zeros(frame_length) | |
offset = (frame_length - window_length) // 2 if center else 0 | |
padded_window[offset : offset + window_length] = window | |
return padded_window | |
# TODO This method does not support batching yet as we are mainly focused on inference. | |
def spectrogram( | |
waveform: np.ndarray, | |
window: np.ndarray, | |
frame_length: int, | |
hop_length: int, | |
fft_length: Optional[int] = None, | |
power: Optional[float] = 1.0, | |
center: bool = True, | |
pad_mode: str = "reflect", | |
onesided: bool = True, | |
preemphasis: Optional[float] = None, | |
mel_filters: Optional[np.ndarray] = None, | |
mel_floor: float = 1e-10, | |
log_mel: Optional[str] = None, | |
reference: float = 1.0, | |
min_value: float = 1e-10, | |
db_range: Optional[float] = None, | |
remove_dc_offset: Optional[bool] = None, | |
dtype: np.dtype = np.float32, | |
) -> np.ndarray: | |
""" | |
Calculates a spectrogram over one waveform using the Short-Time Fourier Transform. | |
This function can create the following kinds of spectrograms: | |
- amplitude spectrogram (`power = 1.0`) | |
- power spectrogram (`power = 2.0`) | |
- complex-valued spectrogram (`power = None`) | |
- log spectrogram (use `log_mel` argument) | |
- mel spectrogram (provide `mel_filters`) | |
- log-mel spectrogram (provide `mel_filters` and `log_mel`) | |
How this works: | |
1. The input waveform is split into frames of size `frame_length` that are partially overlapping by `frame_length | |
- hop_length` samples. | |
2. Each frame is multiplied by the window and placed into a buffer of size `fft_length`. | |
3. The DFT is taken of each windowed frame. | |
4. The results are stacked into a spectrogram. | |
We make a distinction between the following "blocks" of sample data, each of which may have a different lengths: | |
- The analysis frame. This is the size of the time slices that the input waveform is split into. | |
- The window. Each analysis frame is multiplied by the window to avoid spectral leakage. | |
- The FFT input buffer. The length of this determines how many frequency bins are in the spectrogram. | |
In this implementation, the window is assumed to be zero-padded to have the same size as the analysis frame. A | |
padded window can be obtained from `window_function()`. The FFT input buffer may be larger than the analysis frame, | |
typically the next power of two. | |
Note: This function is not optimized for speed yet. It should be mostly compatible with `librosa.stft` and | |
`torchaudio.functional.transforms.Spectrogram`, although it is more flexible due to the different ways spectrograms | |
can be constructed. | |
Args: | |
waveform (`np.ndarray` of shape `(length,)`): | |
The input waveform. This must be a single real-valued, mono waveform. | |
window (`np.ndarray` of shape `(frame_length,)`): | |
The windowing function to apply, including zero-padding if necessary. The actual window length may be | |
shorter than `frame_length`, but we're assuming the array has already been zero-padded. | |
frame_length (`int`): | |
The length of the analysis frames in samples. With librosa this is always equal to `fft_length` but we also | |
allow smaller sizes. | |
hop_length (`int`): | |
The stride between successive analysis frames in samples. | |
fft_length (`int`, *optional*): | |
The size of the FFT buffer in samples. This determines how many frequency bins the spectrogram will have. | |
For optimal speed, this should be a power of two. If `None`, uses `frame_length`. | |
power (`float`, *optional*, defaults to 1.0): | |
If 1.0, returns the amplitude spectrogram. If 2.0, returns the power spectrogram. If `None`, returns | |
complex numbers. | |
center (`bool`, *optional*, defaults to `True`): | |
Whether to pad the waveform so that frame `t` is centered around time `t * hop_length`. If `False`, frame | |
`t` will start at time `t * hop_length`. | |
pad_mode (`str`, *optional*, defaults to `"reflect"`): | |
Padding mode used when `center` is `True`. Possible values are: `"constant"` (pad with zeros), `"edge"` | |
(pad with edge values), `"reflect"` (pads with mirrored values). | |
onesided (`bool`, *optional*, defaults to `True`): | |
If True, only computes the positive frequencies and returns a spectrogram containing `fft_length // 2 + 1` | |
frequency bins. If False, also computes the negative frequencies and returns `fft_length` frequency bins. | |
preemphasis (`float`, *optional*) | |
Coefficient for a low-pass filter that applies pre-emphasis before the DFT. | |
mel_filters (`np.ndarray` of shape `(num_freq_bins, num_mel_filters)`, *optional*): | |
The mel filter bank. If supplied, applies a this filter bank to create a mel spectrogram. | |
mel_floor (`float`, *optional*, defaults to 1e-10): | |
Minimum value of mel frequency banks. | |
log_mel (`str`, *optional*): | |
How to convert the spectrogram to log scale. Possible options are: `None` (don't convert), `"log"` (take | |
the natural logarithm) `"log10"` (take the base-10 logarithm), `"dB"` (convert to decibels). Can only be | |
used when `power` is not `None`. | |
reference (`float`, *optional*, defaults to 1.0): | |
Sets the input spectrogram value that corresponds to 0 dB. For example, use `np.max(spectrogram)` to set | |
the loudest part to 0 dB. Must be greater than zero. | |
min_value (`float`, *optional*, defaults to `1e-10`): | |
The spectrogram will be clipped to this minimum value before conversion to decibels, to avoid taking | |
`log(0)`. For a power spectrogram, the default of `1e-10` corresponds to a minimum of -100 dB. For an | |
amplitude spectrogram, the value `1e-5` corresponds to -100 dB. Must be greater than zero. | |
db_range (`float`, *optional*): | |
Sets the maximum dynamic range in decibels. For example, if `db_range = 80`, the difference between the | |
peak value and the smallest value will never be more than 80 dB. Must be greater than zero. | |
remove_dc_offset (`bool`, *optional*): | |
Subtract mean from waveform on each frame, applied before pre-emphasis. This should be set to `true` in | |
order to get the same results as `torchaudio.compliance.kaldi.fbank` when computing mel filters. | |
dtype (`np.dtype`, *optional*, defaults to `np.float32`): | |
Data type of the spectrogram tensor. If `power` is None, this argument is ignored and the dtype will be | |
`np.complex64`. | |
Returns: | |
`nd.array` containing a spectrogram of shape `(num_frequency_bins, length)` for a regular spectrogram or shape | |
`(num_mel_filters, length)` for a mel spectrogram. | |
""" | |
window_length = len(window) | |
if fft_length is None: | |
fft_length = frame_length | |
if frame_length > fft_length: | |
raise ValueError(f"frame_length ({frame_length}) may not be larger than fft_length ({fft_length})") | |
if window_length != frame_length: | |
raise ValueError(f"Length of the window ({window_length}) must equal frame_length ({frame_length})") | |
if hop_length <= 0: | |
raise ValueError("hop_length must be greater than zero") | |
if waveform.ndim != 1: | |
raise ValueError(f"Input waveform must have only one dimension, shape is {waveform.shape}") | |
if np.iscomplexobj(waveform): | |
raise ValueError("Complex-valued input waveforms are not currently supported") | |
# center pad the waveform | |
if center: | |
padding = [(int(frame_length // 2), int(frame_length // 2))] | |
waveform = np.pad(waveform, padding, mode=pad_mode) | |
# promote to float64, since np.fft uses float64 internally | |
waveform = waveform.astype(np.float64) | |
window = window.astype(np.float64) | |
# split waveform into frames of frame_length size | |
num_frames = int(1 + np.floor((waveform.size - frame_length) / hop_length)) | |
num_frequency_bins = (fft_length // 2) + 1 if onesided else fft_length | |
spectrogram = np.empty((num_frames, num_frequency_bins), dtype=np.complex64) | |
# rfft is faster than fft | |
fft_func = np.fft.rfft if onesided else np.fft.fft | |
buffer = np.zeros(fft_length) | |
timestep = 0 | |
for frame_idx in range(num_frames): | |
buffer[:frame_length] = waveform[timestep : timestep + frame_length] | |
if remove_dc_offset: | |
buffer[:frame_length] = buffer[:frame_length] - buffer[:frame_length].mean() | |
if preemphasis is not None: | |
buffer[1:frame_length] -= preemphasis * buffer[: frame_length - 1] | |
buffer[0] *= 1 - preemphasis | |
buffer[:frame_length] *= window | |
spectrogram[frame_idx] = fft_func(buffer) | |
timestep += hop_length | |
# note: ** is much faster than np.power | |
if power is not None: | |
spectrogram = np.abs(spectrogram, dtype=np.float64) ** power | |
spectrogram = spectrogram.T | |
if mel_filters is not None: | |
spectrogram = np.maximum(mel_floor, np.dot(mel_filters.T, spectrogram)) | |
if power is not None and log_mel is not None: | |
if log_mel == "log": | |
spectrogram = np.log(spectrogram) | |
elif log_mel == "log10": | |
spectrogram = np.log10(spectrogram) | |
elif log_mel == "dB": | |
if power == 1.0: | |
spectrogram = amplitude_to_db(spectrogram, reference, min_value, db_range) | |
elif power == 2.0: | |
spectrogram = power_to_db(spectrogram, reference, min_value, db_range) | |
else: | |
raise ValueError(f"Cannot use log_mel option '{log_mel}' with power {power}") | |
else: | |
raise ValueError(f"Unknown log_mel option: {log_mel}") | |
spectrogram = np.asarray(spectrogram, dtype) | |
return spectrogram | |
def power_to_db( | |
spectrogram: np.ndarray, | |
reference: float = 1.0, | |
min_value: float = 1e-10, | |
db_range: Optional[float] = None, | |
) -> np.ndarray: | |
""" | |
Converts a power spectrogram to the decibel scale. This computes `10 * log10(spectrogram / reference)`, using basic | |
logarithm properties for numerical stability. | |
The motivation behind applying the log function on the (mel) spectrogram is that humans do not hear loudness on a | |
linear scale. Generally to double the perceived volume of a sound we need to put 8 times as much energy into it. | |
This means that large variations in energy may not sound all that different if the sound is loud to begin with. | |
This compression operation makes the (mel) spectrogram features match more closely what humans actually hear. | |
Based on the implementation of `librosa.power_to_db`. | |
Args: | |
spectrogram (`np.ndarray`): | |
The input power (mel) spectrogram. Note that a power spectrogram has the amplitudes squared! | |
reference (`float`, *optional*, defaults to 1.0): | |
Sets the input spectrogram value that corresponds to 0 dB. For example, use `np.max(spectrogram)` to set | |
the loudest part to 0 dB. Must be greater than zero. | |
min_value (`float`, *optional*, defaults to `1e-10`): | |
The spectrogram will be clipped to this minimum value before conversion to decibels, to avoid taking | |
`log(0)`. The default of `1e-10` corresponds to a minimum of -100 dB. Must be greater than zero. | |
db_range (`float`, *optional*): | |
Sets the maximum dynamic range in decibels. For example, if `db_range = 80`, the difference between the | |
peak value and the smallest value will never be more than 80 dB. Must be greater than zero. | |
Returns: | |
`np.ndarray`: the spectrogram in decibels | |
""" | |
if reference <= 0.0: | |
raise ValueError("reference must be greater than zero") | |
if min_value <= 0.0: | |
raise ValueError("min_value must be greater than zero") | |
reference = max(min_value, reference) | |
spectrogram = np.clip(spectrogram, a_min=min_value, a_max=None) | |
spectrogram = 10.0 * (np.log10(spectrogram) - np.log10(reference)) | |
if db_range is not None: | |
if db_range <= 0.0: | |
raise ValueError("db_range must be greater than zero") | |
spectrogram = np.clip(spectrogram, a_min=spectrogram.max() - db_range, a_max=None) | |
return spectrogram | |
def amplitude_to_db( | |
spectrogram: np.ndarray, | |
reference: float = 1.0, | |
min_value: float = 1e-5, | |
db_range: Optional[float] = None, | |
) -> np.ndarray: | |
""" | |
Converts an amplitude spectrogram to the decibel scale. This computes `20 * log10(spectrogram / reference)`, using | |
basic logarithm properties for numerical stability. | |
The motivation behind applying the log function on the (mel) spectrogram is that humans do not hear loudness on a | |
linear scale. Generally to double the perceived volume of a sound we need to put 8 times as much energy into it. | |
This means that large variations in energy may not sound all that different if the sound is loud to begin with. | |
This compression operation makes the (mel) spectrogram features match more closely what humans actually hear. | |
Args: | |
spectrogram (`np.ndarray`): | |
The input amplitude (mel) spectrogram. | |
reference (`float`, *optional*, defaults to 1.0): | |
Sets the input spectrogram value that corresponds to 0 dB. For example, use `np.max(spectrogram)` to set | |
the loudest part to 0 dB. Must be greater than zero. | |
min_value (`float`, *optional*, defaults to `1e-5`): | |
The spectrogram will be clipped to this minimum value before conversion to decibels, to avoid taking | |
`log(0)`. The default of `1e-5` corresponds to a minimum of -100 dB. Must be greater than zero. | |
db_range (`float`, *optional*): | |
Sets the maximum dynamic range in decibels. For example, if `db_range = 80`, the difference between the | |
peak value and the smallest value will never be more than 80 dB. Must be greater than zero. | |
Returns: | |
`np.ndarray`: the spectrogram in decibels | |
""" | |
if reference <= 0.0: | |
raise ValueError("reference must be greater than zero") | |
if min_value <= 0.0: | |
raise ValueError("min_value must be greater than zero") | |
reference = max(min_value, reference) | |
spectrogram = np.clip(spectrogram, a_min=min_value, a_max=None) | |
spectrogram = 20.0 * (np.log10(spectrogram) - np.log10(reference)) | |
if db_range is not None: | |
if db_range <= 0.0: | |
raise ValueError("db_range must be greater than zero") | |
spectrogram = np.clip(spectrogram, a_min=spectrogram.max() - db_range, a_max=None) | |
return spectrogram | |
### deprecated functions below this line ### | |
def get_mel_filter_banks( | |
nb_frequency_bins: int, | |
nb_mel_filters: int, | |
frequency_min: float, | |
frequency_max: float, | |
sample_rate: int, | |
norm: Optional[str] = None, | |
mel_scale: str = "htk", | |
) -> np.array: | |
warnings.warn( | |
"The function `get_mel_filter_banks` is deprecated and will be removed in version 4.31.0 of Transformers", | |
FutureWarning, | |
) | |
return mel_filter_bank( | |
num_frequency_bins=nb_frequency_bins, | |
num_mel_filters=nb_mel_filters, | |
min_frequency=frequency_min, | |
max_frequency=frequency_max, | |
sampling_rate=sample_rate, | |
norm=norm, | |
mel_scale=mel_scale, | |
) | |
def fram_wave(waveform: np.array, hop_length: int = 160, fft_window_size: int = 400, center: bool = True): | |
""" | |
In order to compute the short time fourier transform, the waveform needs to be split in overlapping windowed | |
segments called `frames`. | |
The window length (window_length) defines how much of the signal is contained in each frame, while the hop length | |
defines the step between the beginning of each new frame. | |
Args: | |
waveform (`np.array` of shape `(sample_length,)`): | |
The raw waveform which will be split into smaller chunks. | |
hop_length (`int`, *optional*, defaults to 160): | |
Step between each window of the waveform. | |
fft_window_size (`int`, *optional*, defaults to 400): | |
Defines the size of the window. | |
center (`bool`, defaults to `True`): | |
Whether or not to center each frame around the middle of the frame. Centering is done by reflecting the | |
waveform on the left and on the right. | |
Return: | |
framed_waveform (`np.array` of shape `(waveform.shape // hop_length , fft_window_size)`): | |
The framed waveforms that can be fed to `np.fft`. | |
""" | |
warnings.warn( | |
"The function `fram_wave` is deprecated and will be removed in version 4.31.0 of Transformers", | |
FutureWarning, | |
) | |
frames = [] | |
for i in range(0, waveform.shape[0] + 1, hop_length): | |
if center: | |
half_window = (fft_window_size - 1) // 2 + 1 | |
start = i - half_window if i > half_window else 0 | |
end = i + half_window if i < waveform.shape[0] - half_window else waveform.shape[0] | |
frame = waveform[start:end] | |
if start == 0: | |
padd_width = (-i + half_window, 0) | |
frame = np.pad(frame, pad_width=padd_width, mode="reflect") | |
elif end == waveform.shape[0]: | |
padd_width = (0, (i - waveform.shape[0] + half_window)) | |
frame = np.pad(frame, pad_width=padd_width, mode="reflect") | |
else: | |
frame = waveform[i : i + fft_window_size] | |
frame_width = frame.shape[0] | |
if frame_width < waveform.shape[0]: | |
frame = np.lib.pad( | |
frame, pad_width=(0, fft_window_size - frame_width), mode="constant", constant_values=0 | |
) | |
frames.append(frame) | |
frames = np.stack(frames, 0) | |
return frames | |
def stft(frames: np.array, windowing_function: np.array, fft_window_size: int = None): | |
""" | |
Calculates the complex Short-Time Fourier Transform (STFT) of the given framed signal. Should give the same results | |
as `torch.stft`. | |
Args: | |
frames (`np.array` of dimension `(num_frames, fft_window_size)`): | |
A framed audio signal obtained using `audio_utils.fram_wav`. | |
windowing_function (`np.array` of dimension `(nb_frequency_bins, nb_mel_filters)`: | |
A array reprensenting the function that will be used to reduces the amplitude of the discontinuities at the | |
boundaries of each frame when computing the STFT. Each frame will be multiplied by the windowing_function. | |
For more information on the discontinuities, called *Spectral leakage*, refer to [this | |
tutorial]https://download.ni.com/evaluation/pxi/Understanding%20FFTs%20and%20Windowing.pdf | |
fft_window_size (`int`, *optional*): | |
Size of the window om which the Fourier transform is applied. This controls the frequency resolution of the | |
spectrogram. 400 means that the fourrier transform is computed on windows of 400 samples. The number of | |
frequency bins (`nb_frequency_bins`) used to divide the window into equal strips is equal to | |
`(1+fft_window_size)//2`. An increase of the fft_window_size slows the calculus time proportionnally. | |
Example: | |
```python | |
>>> from transformers.audio_utils import stft, fram_wave | |
>>> import numpy as np | |
>>> audio = np.random.rand(50) | |
>>> fft_window_size = 10 | |
>>> hop_length = 2 | |
>>> framed_audio = fram_wave(audio, hop_length, fft_window_size) | |
>>> spectrogram = stft(framed_audio, np.hanning(fft_window_size + 1)) | |
``` | |
Returns: | |
spectrogram (`np.ndarray`): | |
A spectrogram of shape `(num_frames, nb_frequency_bins)` obtained using the STFT algorithm | |
""" | |
warnings.warn( | |
"The function `stft` is deprecated and will be removed in version 4.31.0 of Transformers", | |
FutureWarning, | |
) | |
frame_size = frames.shape[1] | |
if fft_window_size is None: | |
fft_window_size = frame_size | |
if fft_window_size < frame_size: | |
raise ValueError("FFT size must greater or equal the frame size") | |
# number of FFT bins to store | |
nb_frequency_bins = (fft_window_size >> 1) + 1 | |
spectrogram = np.empty((len(frames), nb_frequency_bins), dtype=np.complex64) | |
fft_signal = np.zeros(fft_window_size) | |
for f, frame in enumerate(frames): | |
if windowing_function is not None: | |
np.multiply(frame, windowing_function, out=fft_signal[:frame_size]) | |
else: | |
fft_signal[:frame_size] = frame | |
spectrogram[f] = np.fft.fft(fft_signal, axis=0)[:nb_frequency_bins] | |
return spectrogram.T | |