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@gauss256
Created May 5, 2018 23:42
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Script to confirm that STFT can be invertible without the COLA constraint being satisfied
"""Framework to confirm that STFT is invertible even if window is not COLA
For the theory behind this, see: https://gauss256.github.io/blog/cola.html"""
import numpy as np
from scipy import signal
def stft(x, w, nperseg, nhop):
"""Forward STFT"""
X = np.array(
[np.fft.fft(w * x[i:i + nperseg]) for i in range(0, 1 + len(x) - nperseg, nhop)]
)
return X
def istft(X, w, nperseg, nhop):
"""Inverse STFT"""
x = np.zeros(X.shape[0] * nhop)
wsum = np.zeros(X.shape[0] * nhop)
for n, i in enumerate(range(0, 1 + len(x) - nperseg, nhop)):
x[i:i + nperseg] += np.real(np.fft.ifft(X[n])) * w
wsum[i:i + nperseg] += w ** 2.
pos = wsum != 0
x[pos] /= wsum[pos]
return x
def main():
"""Change the parameters and window below to test other scenarios"""
length = 4096
nperseg = 256
nhop = 64
noverlap = nperseg - nhop
w = np.sqrt(signal.hann(nperseg))
pad = nperseg
# The theory assumes that the signal has been zero-padded to infinity,
# so some attention needs to be paid to the boundaries. The following
# is not elegant but it serves the purpose.
x = np.random.randn(length + 2 * pad)
if pad > 0:
x[:pad] = 0
x[-pad:] = 0
X = stft(x, w, nperseg, nhop)
y = istft(X, w, nperseg, nhop)[pad:pad + length]
x_hat = x[pad:pad + length]
print(f"check_COLA: {signal.check_COLA(w, nperseg, noverlap)}")
print(f"allclose : {np.allclose(x_hat, y)}")
if __name__ == "__main__":
main()
@mocquin
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mocquin commented Jun 9, 2023

My bad, after a quick search : scipy/scipy#8791

@mocquin
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mocquin commented Jun 9, 2023

In the blog post you mention the overlap-add method to reconstruct the original time signal (part3). Could you confirm that it is slightly different than the wikipedia reference https://en.wikipedia.org/wiki/Overlap%E2%80%93add_method, which mentions it is an efficient way of computing a convolution.

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