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# File under the MIT license, see https://github.com/adefossez/julius/LICENSE for details.
# Author: adefossez, 2020
"""
Decomposition of a signal over frequency bands in the waveform domain.
"""
from typing import Optional, Sequence
import torch
from .core import mel_frequencies
from .lowpass import LowPassFilters
from .utils import simple_repr
class SplitBands(torch.nn.Module):
"""
Decomposes a signal over the given frequency bands in the waveform domain using
a cascade of low pass filters as implemented by `julius.lowpass.LowPassFilters`.
You can either specify explicitely the frequency cutoffs, or just the number of bands,
in which case the frequency cutoffs will be spread out evenly in mel scale.
Args:
sample_rate (float): Sample rate of the input signal in Hz.
n_bands (int or None): number of bands, when not giving them explictely with `cutoffs`.
In that case, the cutoff frequencies will be evenly spaced in mel-space.
cutoffs (list[float] or None): list of frequency cutoffs in Hz.
pad (bool): if True, appropriately pad the input with zero over the edge. If `stride=1`,
the output will have the same length as the input.
zeros (float): Number of zero crossings to keep. See `LowPassFilters` for more informations.
fft (bool or None): See `LowPassFilters` for more info.
..note::
The sum of all the bands will always be the input signal.
..warning::
Unlike `julius.lowpass.LowPassFilters`, the cutoffs frequencies must be provided in Hz along
with the sample rate.
Shape:
- Input: `[*, T]`
- Output: `[B, *, T']`, with `T'=T` if `pad` is True.
If `n_bands` was provided, `B = n_bands` otherwise `B = len(cutoffs) + 1`
>>> bands = SplitBands(sample_rate=128, n_bands=10)
>>> x = torch.randn(6, 4, 1024)
>>> list(bands(x).shape)
[10, 6, 4, 1024]
"""
def __init__(self, sample_rate: float, n_bands: Optional[int] = None,
cutoffs: Optional[Sequence[float]] = None, pad: bool = True,
zeros: float = 8, fft: Optional[bool] = None):
super().__init__()
if (cutoffs is None) + (n_bands is None) != 1:
raise ValueError("You must provide either n_bands, or cutoffs, but not boths.")
self.sample_rate = sample_rate
self.n_bands = n_bands
self._cutoffs = list(cutoffs) if cutoffs is not None else None
self.pad = pad
self.zeros = zeros
self.fft = fft
if cutoffs is None:
if n_bands is None:
raise ValueError("You must provide one of n_bands or cutoffs.")
if not n_bands >= 1:
raise ValueError(f"n_bands must be greater than one (got {n_bands})")
cutoffs = mel_frequencies(n_bands + 1, 0, sample_rate / 2)[1:-1]
else:
if max(cutoffs) > 0.5 * sample_rate:
raise ValueError("A cutoff above sample_rate/2 does not make sense.")
if len(cutoffs) > 0:
self.lowpass = LowPassFilters(
[c / sample_rate for c in cutoffs], pad=pad, zeros=zeros, fft=fft)
else:
# Here I cannot make both TorchScript and MyPy happy.
# I miss the good old times, before all this madness was created.
self.lowpass = None # type: ignore
def forward(self, input):
if self.lowpass is None:
return input[None]
lows = self.lowpass(input)
low = lows[0]
bands = [low]
for low_and_band in lows[1:]:
# Get a bandpass filter by substracting lowpasses
band = low_and_band - low
bands.append(band)
low = low_and_band
# Last band is whatever is left in the signal
bands.append(input - low)
return torch.stack(bands)
@property
def cutoffs(self):
if self._cutoffs is not None:
return self._cutoffs
elif self.lowpass is not None:
return [c * self.sample_rate for c in self.lowpass.cutoffs]
else:
return []
def __repr__(self):
return simple_repr(self, overrides={"cutoffs": self._cutoffs})
def split_bands(signal: torch.Tensor, sample_rate: float, n_bands: Optional[int] = None,
cutoffs: Optional[Sequence[float]] = None, pad: bool = True,
zeros: float = 8, fft: Optional[bool] = None):
"""
Functional version of `SplitBands`, refer to this class for more information.
>>> x = torch.randn(6, 4, 1024)
>>> list(split_bands(x, sample_rate=64, cutoffs=[12, 24]).shape)
[3, 6, 4, 1024]
"""
return SplitBands(sample_rate, n_bands, cutoffs, pad, zeros, fft).to(signal)(signal)