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1. Dealing with Acoustic Noise Part 1: Spectral Estimation Mark Hasegawa-Johnson
University of Illinois
Lectures at CLSP WS06
July 20, 2006
2. Noise from the Perspective of the Brainstem
3. Noise from the Perspective of the Brainstem
4. A Speech Recognition Model (Mixture Gaussian) Problem: find the most probable class (Cn) given measurements of a function (f(S)) of the speech signal (S). For example, f(S) might be the PLP coefficients.
Solution: Choose n such that p(Cn,S)>p(Cm,S) for n?m.
What is p(Cn,S)? The most effective current computational model is the mixture Gaussian: the weighted sum of exp(-|m-f(S)|W2), where |x|W2=xTWx. 2W is called the precision matrix.
5. How Should the Model React to Additive Noise? Suppose that we only have a noisy measurement, X:
... where V is independent noise. Then Cn should maximize:
6. Answer: By Computing fMMSE
7. Definition of fMMSE
8. Classical Estimators: Maximum Likelihood
9. Classical Estimators: Maximum A Posteriori
10. Classical Estimators: Minimum Mean Squared Error
11. Functions of Random Variables Since fMMSE(S)?f(SMMSE), it is necessary to find the probability density function of f(S) directly. Fortunately, the PDF of f(S) can always be computed from the PDF of S, as follows:
12. PDF of Speech: Time Domain Speech samples s[n] are often modeled as Gaussian, because Gaussian PDFs are easy to manipulate.
In fact, noise tends to be Gaussian, but
Speech PDF is actually a mixture of Gaussian small-amplitude samples (the noise bits?) and Laplacian high-amplitude samples (the actual speech bits?)
13. PDF of Speech: Filter Outputs, e.g., STFT STFT is just a filter with complex-valued filter coefficients:
Central Limit Theorem says Sk should be a 2D Gaussian, if the window is infinitely long
14. Err. Is it REALLY Gaussian?
15. If we ignore the previous slide, and pretend that Sk is a complex Gaussian, then it is possible to analytically derive the PDFs of |Sk|2, |Sk|, and phase of Sk. They are:
16. Classical Spectral Estimation: Assumptions One signal is ongoing (call it the noise), so its lN is known (averaged over time prior to voice activity detection).
The MMSE estimate of the other signal, S, combines two types of information:
a priori knowledge, lS = E[|Sk|2]
a priori SNR: xk = lS / lN
Maximum likelihood estimator, SML = |Xk|2-lN
Maximum likelihood SNR: g k = |Xk|2 / lN
17. Classical Spectral Estimation Results:Wiener Filter(Norbert Wiener, 1949)
18. Classical Spectral Estimation Results:MMSE Spectral Amplitude Estimate(Ephraim and Malah, 1984)
19. Classical Spectral Estimation Results:MMSE Log Amplitude Estimate (Ephraim and Malah, 1985)
20. How does it sound?
21. How does it sound? MVDR Beamformer eliminates high-frequency noise, MMSE-logSA eliminates low-frequency noise
MMSE-logSA adds reverberation at low frequencies; reverberation seems to not effect speech recognition accuracy
23. Loudness Spectrum Perceptual LPC (PLP) begins by computing an estimate of the perceptual loudness spectrum.
Step 1: filter the signal using complex-valued Bark-scale critical-band filters hk[m]:
Step 2: compress the amplitudes with a nonlinearity:
24. MMSE Estimate of the Perceptual Loudness Spectrum gPLP requires numerical integration (of u1/3e-u)
Numerical integration is a lot cheaper than it used to be (e.g., via lookup table).
25. A Conservative Computational Auditory Model
26. Change Detection (VAD) Is there something new in the signal (hypothesis H1), or not (hypothesis H0)?
p1=p(H1) a priori, p0=p(H0) a priori
Solution: compute the log likelihood ratio
which has a simple form, in terms of gk: