Title: CEPSTRAL ANALYSIS
1CEPSTRAL ANALYSIS
- Cepstral analysis synthesis on the mel frequency
scale, and an adaptative algorithm for it.
Cecilia Caruncho Llaguno
2Sources
- Cepstral analysis on the mel frequency scale
- Satoshi Imai - Tokio Institute of Technology,
1983 - An adaptative algorithm for mel-cepstral analysis
of speech - Toshiako Fukada - Canon Inc. Kawasaki, 1992
- Keeichi Tokuda, Takao Kobayasi, and Satoshi Imai
- Tokio Institute of Technology, 1992
3Basic Concepts
- Cepstral Analysis
- Definition
- Features
- Mel frequency scale
4Cepstral analysis
- Main features
- Good characteristics for representation
- Log spectral envelope ? accurate efficient
- Small sensitivity quantization noise
- Small spectral distortion
- LMA filter ? high quality speech synthesis
5Cepstral analysis
Complex logarithm
Inverse Z transform
In unit circle zlt1
6Mel frequency scale
- Human hearing sense ? non-linear
frequency scale - Linear up to 1000 Hz, logarithmic above.
7Mel cepstral analysis system
8Spectral envelope extraction by the improved
cepstral method
- Approximation of the mel scale
9Spectral envelope extraction by the improved
cepstral method
- Former method
- Fine structure ? The spectral envelope is not
suficiently separated from the pitch parameter - Present method
- Can extract the envelope without being affected
by the fine structure.
10Mel Log Spectrum Approximation filter
- Why do we use it?
- High quality
- Simple
- Coefficient sensitivities
- Quantization characteristics
- Transfer function
- Quantization of the filter parameter
11MLSA transfer function
Ideal
Basic filter
12MLSA transfer function
Ideal MLSA filter
Not realizable
Padé approximation
13Filter parameters
14Data rate
- Filter coefficients ? bounded
- Digitalization ? quantizer q ? data amount bs
- (bits/frame)
15Data rate
- Spectral envelope bs bits/frame
- Pitch parameter bp bits/frame
- Period of transmission T seconds
- Averall bit rate of this system B (bits/second)
16Data rate
T (ms) M q Bp (bit) B (kbits/s) Speech quality
15 11 0.25 7 4 Very high
20 8 0.5 7 2 Fairly good
25 5 0.5 6 1.2 Still good
17Spectral distortion
Distortion caused by the interpolation
Distortion caused by the quantization
18Spectral estimation based on
mel-cepstral representation
19Spectral estimation based on
mel-cepstral representation
- Unbiased Estimator of Log Spectrum by S. Imai and
C. Furuichi ? minimization of e
20Spectral estimation based on
mel-cepstral representation
21Adaptative mel-cepstral analysis
algorithm
H ? Unit matrix ?
e(n) ? output of the inverse filter 1/D(z) at
time n ?
µ... adaptation step size e(n)... estimate of e
at time n
22Adaptative mel-cepstral analysis
algorithm
23Conclusions
- MLSA
- Simple
- Good stathistical features
- Small spectral distortions
- Adaptative algorithm
- Computationally efficient
- Fast convergence properties
24Questions?
- Thank you for your attention
- Muchas gracias por su atención