Paper: | SLP-L11.5 |
Session: | Advances in Speech Analysis and Representations |
Time: | Friday, May 19, 15:20 - 15:40 |
Presentation: |
Lecture
|
Topic: |
Speech and Spoken Language Processing: Speech Analysis |
Title: |
Voicing-Character Estimation of Speech Spectra: Application to Noise Robust Speech Recognition |
Authors: |
Peter Jancovic, University of Birmingham, United Kingdom; Munevver Kokuer, Coventry University, United Kingdom |
Abstract: |
This paper presents a novel method for estimating the voicing-character of speech spectra, demonstrates its employment in noise robust ASR and proposes a modified calculation of filter-bank energies. The proposed voicing-character estimation is based on calculation of a similarity between the shape of the signal short-term magnitude spectra around spectral peaks and spectra of the frame-analysis window. The similarity is weighted by the signal magnitude spectra to reflect the filter-bank analysis typically used in feature extraction for speech recognition. The experimental results show less than 5% false-acceptance and false-rejection errors in detection of voiced filter-bank channels in speech signal corrupted by white noise at 10dB local SNR. The recognition results obtained by a missing-feature based ASR system using features estimated as voiced by the proposed method are very similar to using oracle voicing-label obtained by full a-priori knowledge of noise. The employment of features obtained by a modified calculation of filter-bank energies shows further improvements in the recognition accuracy. |