It is often acknowledged that speech signals contain short-term and long-term temporal properties [15] that are difficult to capture and model by using the usual fixed scale (typically 20ms) short time spectral analysis used in hidden Markov models (HMMs), based on piecewise stationarity and state conditional independence assumptions of acoustic vectors. For example, vowels are typically quasi stationary over 40-80ms segments, while plosive typically require analysis below 20ms segments. Thus, fixed scale analysis is clearly sub-optimal for "optimal" time-frequency resolution and modeling of different stationary phones found in the speech signal. In the present paper, we investigate the potential advantages of using variable size analysis windows towards improving state-of-the-art speech recognition systems. Based on the usual assumption that the speech signal can be modeled by a timevarying autoregressive (AR) Gaussian process, we estimate the largest piecewise quasi-stationary speech segments, based on the likelihood that a segment was generated by the same AR process. This likelihood is estimated from the Linear Prediction (LP) residual error. Each of these quasi-stationary segments is then used as an analysis window from which spectral features are extracted. Such an approach thus results in a variable scale time spectral analysis, adaptively estimating the largest possible analysis window size such that the signal remains quasi-stationary, thus the best temporal/frequency resolution tradeoff. The speech recognition experiments on the OGI Numbers95 database[19], show that the proposed variable-scale piecewise stationary spectral analysis based features indeed yield improved recognition accuracy in clean conditions, compared to features based on minimum cross entropy spectrum [1] as well as those based on fixed scale spectral analysis.
On variable-scale piecewise stationary spectral analysis of speech signals for ASR
Speech Communication, Volume 48, Issue 9, September 2006
Type:
Journal
Date:
2006-09-01
Department:
Digital Security
Eurecom Ref:
1935
Copyright:
© Elsevier. Personal use of this material is permitted. The definitive version of this paper was published in Speech Communication, Volume 48, Issue 9, September 2006 and is available at : http://dx.doi.org/10.1016/j.specom.2006.04.002
See also:
PERMALINK : https://www.eurecom.fr/publication/1935