PERCEPTUAL LINEAR PREDICTION
BLOCK DIAGRAM
- Goals:
- Apply greater weight to perceptually-important portions
of the spectrum
- Avoid uniform weighting across the frequency band
- Algorithm:
- Compute the spectrum via a DFT
- Warp the spectrum along the Bark frequency scale
- Convolve the warped spectrum with the power spectrum of
the simulated critical band masking curve and downsample
(to typically 18 spectral samples)
- Preemphasize by the simulated equal-loudness curve:
- Simulate the nonlinear relationship between
intensity and perceived loudness by performing
a cubic-root amplitude compression
- Compute an LP model
- Compute an LP-derived cepstrum
- Claims:
- Improved speaker independent recognition performance
- Increased robustness to noise, variations in the channel,
and microphones