Title :
Perceptual speech processing and phonetic feature mapping for robust vowel recognition
Author :
Bu, Linkai ; Church, T.-D.
Author_Institution :
Dept. of Electr. Eng., Nat. Taiwan Univ., Taipei, Taiwan
fDate :
3/1/2000 12:00:00 AM
Abstract :
We propose perceptual speech processing and phonetic feature mapping, which are inspired by the human auditory perceptual characteristics. The proposed perceptual speech processing is based on three perceptual characteristics and consists of three independent processing steps: masking effect, minimum audible field renormalization, and mel-scale resampling. They remove unperceptible spectral components, and adjust the magnitude and frequency scales of speech spectra, respectively. We apply these three processing steps to the speech spectrum sequentially to generate a new speech signal representation called the perceptual spectrum. For Mandarin vowel recognition, nine representative vowels are selected as references and similarity measures to these reference spectra, called phonetic features, are then generated from the perceptual spectrum. These phonetic features then serve as speech parameters in a continuous HMM-based recognition, stage. With these two techniques, a high recognition accuracy on Mandarin vowel phonemes has been achieved. Further experiments confirm that significant improvement on recognition robustness with respect to speaker variation and noise contamination can also obtained
Keywords :
feature extraction; hearing; hidden Markov models; natural languages; noise; signal representation; signal sampling; spectral analysis; speech processing; speech recognition; Mandarin vowel phonemes; Mandarin vowel recognition; continuous HMM-based recognition; experiments; frequency scale adjustment; high recognition accuracy; human auditory perceptual characteristics; magnitude scale adjustment; masking effect; mel-scale resampling; minimum audible field renormalization; noise contamination; perceptual spectrum; perceptual speech processing; phonetic feature mapping; phonetic features; recognition robustness; reference spectra; robust vowel recognition; similarity measures; speaker variation; spectral components; speech parameters; speech signal representation; speech spectra; speech spectrum; Auditory system; Automatic speech recognition; Character recognition; Hidden Markov models; Humans; Neural networks; Noise robustness; Signal sampling; Speech processing; Speech recognition;
Journal_Title :
Speech and Audio Processing, IEEE Transactions on