Research Area: | Uncategorized | Year: | 2008 | ||||
Type of Publication: | Article | Keywords: | Prosody; Vowel onset point; Intonation; Stress; Rhythm; Language recognition; Speaker recognition; Multilayer feedforward neural network; Autoassociative neural network | ||||
Authors: | Leena Mary, B. Yegnanarayana | ||||||
Note: | |||||||
http://www.sciencedirect.com/science/article/B6V1C-4SHVSRT-1/2/0120b8ce1cb86c9d44bb17c154aa7f88 |
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Abstract: | |||||||
In this paper, we propose a new approach for extracting and representing prosodic features directly from the speech signal. We hypothesize that prosody is linked to linguistic units such as syllables, and it is manifested in terms of changes in measurable parameters such as fundamental frequency (F0), duration and energy. In this work, syllable-like unit is chosen as the basic unit for representing the prosodic characteristics. Approximate segmentation of continuous speech into syllable-like units is obtained by locating the vowel onset points (VOP) automatically. The knowledge of the VOPs serve as reference for extracting prosodic features from the speech signal. Quantitative parameters are used to represent F0 and energy contour in each region between two consecutive VOPs. Prosodic features extracted using this approach may be useful in applications such as recognition of language or speaker, where explicit phoneme/syllable boundaries are not easily available. The effectiveness of the derived prosodic features for language and speaker recognition is evaluated in the case of NIST language recognition evaluation 2003 and the extended data task of NIST speaker recognition evaluation 2003, respectively. |
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Digital version |