A noise reduction method incorporating consonant and vowel characteristics for dysarthric speech recognition
- Abstract
- In this paper, a noise reduction method is proposed which incorporates
consonant and vowel characteristics for dysarthric automatic speech
recognition (ASR). Due to the noise-like acoustic characteristics of unvoiced
consonants, Wiener filtering approaches may provide more distorted spectra of
unvoiced consonants of dysarthric speech than those of voiced consonants.
Thus, the proposed method selectively applies a Wiener filter or a Kalman filter
depending on the voiced or unvoiced classification of consonants, respectively.
In order to demonstrate the effectiveness of the proposed noise reduction method,
ASR experiments are carried out on a database of mild and mild-tomoderate
dysarthric speeches under different noise conditions. Consequently, it
is shown that the proposed noise reduction method achieves relative average
word error rate reductions of 20.45% and 8.10% for the mild and mild-tomoderate
dysarthric groups, respectively, compared to that using a Wiener filter.
- Author(s)
- Woo Kyeong Seong; Ji Hun Park; Kim, Hong Kook
- Issued Date
- 2013-07
- Type
- Article
- URI
- https://scholar.gist.ac.kr/handle/local/15490
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