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@johnmeade
Last active November 20, 2024 17:56
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WADA SNR Estimation of Speech Signals in Python
import numpy as np
def wada_snr(wav):
# Direct blind estimation of the SNR of a speech signal.
#
# Paper on WADA SNR:
# http://www.cs.cmu.edu/~robust/Papers/KimSternIS08.pdf
#
# This function was adapted from this matlab code:
# https://labrosa.ee.columbia.edu/projects/snreval/#9
# init
eps = 1e-10
# next 2 lines define a fancy curve derived from a gamma distribution -- see paper
db_vals = np.arange(-20, 101)
g_vals = np.array([0.40974774, 0.40986926, 0.40998566, 0.40969089, 0.40986186, 0.40999006, 0.41027138, 0.41052627, 0.41101024, 0.41143264, 0.41231718, 0.41337272, 0.41526426, 0.4178192 , 0.42077252, 0.42452799, 0.42918886, 0.43510373, 0.44234195, 0.45161485, 0.46221153, 0.47491647, 0.48883809, 0.50509236, 0.52353709, 0.54372088, 0.56532427, 0.58847532, 0.61346212, 0.63954496, 0.66750818, 0.69583724, 0.72454762, 0.75414799, 0.78323148, 0.81240985, 0.84219775, 0.87166406, 0.90030504, 0.92880418, 0.95655449, 0.9835349 , 1.01047155, 1.0362095 , 1.06136425, 1.08579312, 1.1094819 , 1.13277995, 1.15472826, 1.17627308, 1.19703503, 1.21671694, 1.23535898, 1.25364313, 1.27103891, 1.28718029, 1.30302865, 1.31839527, 1.33294817, 1.34700935, 1.3605727 , 1.37345513, 1.38577122, 1.39733504, 1.40856397, 1.41959619, 1.42983624, 1.43958467, 1.44902176, 1.45804831, 1.46669568, 1.47486938, 1.48269965, 1.49034339, 1.49748214, 1.50435106, 1.51076426, 1.51698915, 1.5229097 , 1.528578 , 1.53389835, 1.5391211 , 1.5439065 , 1.54858517, 1.55310776, 1.55744391, 1.56164927, 1.56566348, 1.56938671, 1.57307767, 1.57654764, 1.57980083, 1.58304129, 1.58602496, 1.58880681, 1.59162477, 1.5941969 , 1.59693155, 1.599446 , 1.60185011, 1.60408668, 1.60627134, 1.60826199, 1.61004547, 1.61192472, 1.61369656, 1.61534074, 1.61688905, 1.61838916, 1.61985374, 1.62135878, 1.62268119, 1.62390423, 1.62513143, 1.62632463, 1.6274027 , 1.62842767, 1.62945532, 1.6303307 , 1.63128026, 1.63204102])
# peak normalize, get magnitude, clip lower bound
wav = np.array(wav)
wav = wav / abs(wav).max()
abs_wav = abs(wav)
abs_wav[abs_wav < eps] = eps
# calcuate statistics
# E[|z|]
v1 = max(eps, abs_wav.mean())
# E[log|z|]
v2 = np.log(abs_wav).mean()
# log(E[|z|]) - E[log(|z|)]
v3 = np.log(v1) - v2
# table interpolation
wav_snr_idx = None
if any(g_vals < v3):
wav_snr_idx = np.where(g_vals < v3)[0].max()
# handle edge cases or interpolate
if wav_snr_idx is None:
wav_snr = db_vals[0]
elif wav_snr_idx == len(db_vals) - 1:
wav_snr = db_vals[-1]
else:
wav_snr = db_vals[wav_snr_idx] + \
(v3-g_vals[wav_snr_idx]) / (g_vals[wav_snr_idx+1] - \
g_vals[wav_snr_idx]) * (db_vals[wav_snr_idx+1] - db_vals[wav_snr_idx])
# Calculate SNR
dEng = sum(wav**2)
dFactor = 10**(wav_snr / 10)
dNoiseEng = dEng / (1 + dFactor) # Noise energy
dSigEng = dEng * dFactor / (1 + dFactor) # Signal energy
snr = 10 * np.log10(dSigEng / dNoiseEng)
return snr
@messimm
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messimm commented Nov 27, 2020

Hello, John! Have you had problems with this algorithm? I try to use this implementation of WADA SNR to solve SNR estimation problem. I have result 100.0dB for very noisy files! Is it work correctly? I have results in range 12-22dB for pretty good speech. In my opinion there is something wrong.

@johnmeade
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johnmeade commented Nov 30, 2020

Yes you are correct, here are some SNR scores for some random speech data:
wada-histogram

The issue is coming from the "edge case" handling here: wav_snr = db_vals[-1], and a similar situation will happen with SNR=-20. You can try to tune the gamma "shape" parameter to get a better fit for your data (explained in paper), it is assumed to be 0.4 here, but a value of 0.5 could be used just as well. That would involve re-computing the values for the curve that are hardcoded in here as g_vals. Perhaps dropping samples that hit these edge cases is another option for you?

I think this is just a limitation of the method at the end of the day, but if anyone has more insight I'd be happy to hear!
Cheers

@cveaux
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cveaux commented Jun 21, 2021

Hi, thanks for this implementation. Have you tested in practice how long needs to be the wav file so that the estimated statistics match the theoretical ones? (ie that the amplitudes of clean speech samples match the expected gamma distribution). I was wondering which of the 2 approaches (this one vs the snr estimated after VAD) is the most accurate?

@johnmeade
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Shorter clips can indeed bias your results with this method, but I haven't tested what the limits are. I would probably recommend the VAD method in the other gist, due to the somewhat frequent edge cases and higher complexity of this method. The VAD method requires some silence regions in the audio however, which is an edge-case of it's own. A combination of the two could work, although I suspect the SNR from each method won't match exactly which could cause issues. I'm afraid I don't have a satisfying answer 😅

@noetits
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noetits commented Dec 29, 2021

Hello, thanks a lot for sharing this piece of code.
To be sure to understand, the 100dB would correspond to very noisy samples because of edge cases, but apart from these edge cases, samples that are e.g. >90dB and <99dB are very clean samples (high SNR)?

Could you confirm we can use this as MIT Licensed, like your VAD gist you're mentioning here?

@johnmeade
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I was able to get good results by dropping samples at -20dB and 100dB, but as this is a statistical method you may still find exceptions.

As for licensing, this is a re-implementation of the original matlab code, but the source code doesn't have a license that I could find. I reached out to the authors months ago and haven't heard back, so I'm not sure it can be used in a commercial setting 🤷. I would license it as MIT (or the least restrictive derivative license) if I could though.

@hagenw
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hagenw commented Mar 16, 2022

Your last block of code is not needed, e.g.

snr = 10 * np.log10(dSigEng / dNoiseEng)
    = 10 * np.log10((dEng * dFactor / (1 + dFactor)) / (dEng / (1 + dFactor)))
    = 10 * np.log10(dFactor)
    = 10 * np.log10(10**(wav_snr / 10))
    = wav_snr

@Namabra
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Namabra commented Sep 12, 2023

Hello, I have a short question :) I want to use this function to calculate the SNR for audio files generated with a TTS system. So far, I get a SNR value of 100 for every audio. I also tried it with a different audio file (one that definitely contains noise) and the SNR value was 21. So I don't think I did anything incorrectly with the function.
Would you still disregard the SNR values for the TTS sentences? Or do you think this could a possible result?
I'm very new to this field, so I just would like to be sure. Thank you! :)

@nervjack2
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Hello, I am trying to re-computing the value of g_vals above with 0.5 shape parameters. Are you able to share the code of computing g_vals? It is quite hard to implement the integral equation in the paper. Thank you so much!

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