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1 April 2012
Dereverberation in the STFT and
log mel-frequency feature domains
Takuya Yoshioka
Dereverberation is necessary
for many speech applications“ ”
0
10
20
30
0.2 0.3 0.4 0.5 0.6
ASR (connected digit recognition)
T60 in seconds
Worderrorratein%
ASR (LVCSR using WSJ-20K)
0
20
40
60
80
100
Clean training +MLLR Multi-style training
Worderrorratein%
Source separation
T60=0.3 s T60=0.5 s
0
2
4
6
8
10
12SNRindB
And others…
• Source localization
• Adaptive beamforming
• VAD
Dereverberation is necessary
for many speech applications“ ”
Acoustic feature extraction process
STFT
| ・ |2
Mel FB
Log compression
DCT
Δ, ΔΔ
Microphone
Decoder
Acoustic feature extraction process
STFT
| ・ |2
Mel FB
Log compression
DCT
Δ, ΔΔ
Microphone
Decoder
STFT coefficients
Fully benefit from
the use of
microphone arrays
Acoustic feature extraction process
STFT
| ・ |2
Mel FB
Log compression
DCT
Δ, ΔΔ
Microphone
Decoder
Power spectra
Easy to combine
with noise
suppressors
Acoustic feature extraction process
STFT
| ・ |2
Mel FB
Log compression
DCT
Δ, ΔΔ
Microphone
Decoder
Log mel-frequency
features
Efficient for reducing
the acoustic mismatch
between observations
and training data
n : frame index
ny : corrupted vector
nx : clean vector
nxˆ : estimate of xn
Notations
Optimal estimation in the MMSE sense
∫= nn xxˆ ),,|(p 1nnYY,|X past
yyx  ndx
∫= nn xxˆ ),,|(p 1nnYY,|X past
yyx  ndx
),,,|(p 11-nnnYX,|Y past
yyxy  )(p nX x
×
Clean speech modelReverberation model
Generative approach (using Bayes rule)
∫= nn xxˆ ),,|(p 1nnYY,|X past
yyx  ndx
),,,|(p 11-nnnYX,|Y past
yyxy  )(p nX x
×
Clean speech modelReverberation model
Generative approach (using Bayes rule)
STFT domain
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Log mel-frequency feature domain
Linear
prediction
VTS
STFT domain
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Log mel-frequency feature domain
n : frame index
ny : corrupted complex-valued spectrum
(consisting of 257 bins)
nx : clean complex-valued spectrum
nxˆ : estimate of xn
Notations
∏=
j
X
jn,jn,CNnX,nX )λ;0,(xf)Λ;(p x
Clean STFT coefficients:
normally distributed
X
Jn,
X
n,1 λ,...,λ
X
nP1,...,p
X
pn, σ,)(a =
2
p
piωX
pn,
X
nX
jn,
j
ea1
σ
λ
∑
−
−
=
All-pole model
No model
Model Form Parameters
Clean PSD
STFT domain
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Log mel-frequency feature domain
1-source 1-microphone case:
multi-step LP
∑≥
−
∗
+=
Δp
jp,njp,jn,jn, ygxy
1,2,...njn, )(y =
1,2,...njn, )(x =
1-source 1-microphone case:
multi-step LP
∑≥
−
∗
+=
Δp
jp,njp,jn,jn, ygxy
+
1,2,...njn, )(y =
1,2,...njn, )(x =
)xygδ(y
)Λ;y,,y,x|(yp
jn,jn,p jp,jn,
Rj1,j1,-njn,jn,YX,|Y past
−−= ∑ ∗

STFT domain
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Log mel-frequency feature domain
When model parameters are known
jn,p jp,jn,jn, ygyx ∑ ∗
−= ˆˆ
)ygyδ(x jn,p jp,jn,jn, ∑ ∗
+−= ˆ
)Λ,Λ;y,y|(xp RXj1,jn,jn,YY,|X past
ˆˆ
Inverse filtering
STFT domain
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Log mel-frequency feature domain
ML for parameter estimation
∑∑=
j n
RXj1,j1,-njn,Y|YRX )Λ,Λ;y,y|(ylogp)Λ,L(Λ past

ML for parameter estimation
∑∑=
j n
RXj1,j1,-njn,Y|YRX )Λ,Λ;y,y|(ylogp)Λ,L(Λ past

∫
×
)xygδ(y
)Λ;y,,y,x|(yp
jn,jn,p jp,jn,
Rj1,j1,-njn,jn,YX,|Y past
−−= ∑ ∗

∏=
j
X
jn,jn,CN
nX,nX
)λ;0,(xf
)Λ;(p x
ML for parameter estimation
∑∑=
j n
RXj1,j1,-njn,Y|YRX )Λ,Λ;y,y|(ylogp)Λ,L(Λ past

∑∑
∑ −
∗
−
−−=
j n
X
jn,
2
p jp,njp,jn,X
jn,
λ
|ygy|
)log(λ
ML for parameter estimation
∑∑=
j n
RXj1,j1,-njn,Y|YRX )Λ,Λ;y,y|(ylogp)Λ,L(Λ past

∑∑
∑ −
∗
−
−−=
j n
X
jn,
2
p jp,njp,jn,X
jn,
λ
|ygy|
)log(λ
∑
∑ −
∗
−
=
n
X
jn,
2
p jp,njp,jn,
Λ
jR,
λ
|ygy|
argminΛ
jR,
ˆ
ˆ
If is knownX
jn,λˆ
Iterative optimization
Initializing ΛR
Inverse filtering
Updating ΛR
Convergent?
Updating ΛR
RΛˆ
RΛˆ
XΛˆ
Why LP model for reverberation?
Chain rule is applicable to derive the
likelihood function
Drawback
Non-minimum phase terms cannot be
accurately modeled
“ ”Solution:
using extra microphones
Extensions
• Integration with source separation
• Integration with additive noise reduction
• Adaptive inverse filtering
– Using an RLS-like algorithm
• Application to music signals
– Using a clean source model accounting for strong
harmonic structures
• Exploiting prior knowledge on room properties
STFT domain
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Log mel-frequency feature domain
n : frame index
ny : corrupted log mel-frequency feature
(consisting of 24 coefficients)
nx : clean log mel-frequency feature
nxˆ : estimate of xn
Notations
∑=
k
X
k
X
knNkXnX ),;(fπ)Λ;(p Σμxx
Clean features: pre-trained GMM
)Λk;|(p XnK|X
xDenoted by
STFT domain
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Log mel-frequency feature domain
Reverberation model
Early
reflections
Late reverberation
Direct
sound
Reverberation model
Early
reflections
Late reverberation
H=nY +⋅ nX nR
Direct
sound
Reverberation model
Early
reflections
Late reverberation
*
Clean speech RIR > 50ms
H=nY +⋅ nX nR
Direct
sound
Reverberation model
Early
reflections
Late reverberation
),,(
))--exp(log(1
nn
nnnn
hrxg
hxrhxy
=
+++=
)),,(δ()Λ;,|(p nnnRnnnRX,|Y
hrxgyrxy −=
Direct
sound
Reverberation model
)),,(δ()Λ;,|(p nnnRnnnRX,|Y
hrxgyrxy −=
);( RR
-nnNR11-nnY|R
,f)Λ;,,|(p past
Σβyryyr += ∆
∫×
Reverberation model
),;(f)Λk;,,,,|(p X|Y
kn,
X|Y
kn,nNR11-nnnK,YX,|Y past
Σμyyyxy ≈
),,(
))(,,(
R
Δn
X
k
X
kn
R
Δn
X
k
X|Y
kn,
hβyμg
μxhβyμGμ
++
−+=
−
−
R2R
Δn
X
k
X|Y
kn, )),,(( ΣhβyμGIΣ +−= −
STFT domain
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Clean speech model
Reverberation model
Posterior distribution
Parameter estimation
Log mel-frequency feature domain
pastY|R
p K|X
pg
KR,|Y
pK,YX,|Y past
p
pastY|Y
p
K,Y|Y past
p
pastYY,|K
p
K,YY,|X past
p K,YY,|R past
p
pastYY,|X
p
kπ
Relationship among pdfs
Connected digit recognition
• 1024-component GMM for VTS
• Clean complex back-end defined in Aurora2
• Evaluation data set consisting of 4004
reverberant utterances
– Simulated data
– Impulse responses measured in a varechoic room
– Speaker-microphone distance = 3.5 m
– T60 = 0.2~0.6 sec
0
5
10
15
20
25
30
35
0.2 0.3 0.4 0.5 0.6
Unprocessed
Dereverberated
Dereverberated
(lower bound)
Worderrorratein%
T60 in seconds
Concluding remarks
• Dereverberation can be performed in
different domains
• Reverberation model must accounts for
the strong statistical dependencies
between consecutive observation frames

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Dereverberation in the stft and log mel frequency feature domains