inria-00099530, version 1
Dynamic Bayesian Networks for Multi-Band Automatic Speech Recognition
Computer Speech and Language 17, 2-3 (2003) 263-285
Abstract: This paper presents a new approach to multi-band automatic speech recognition which has the advantage to overcome many limitations of classical muti-band systems. The principle of this new approach is to build a speech model in the time-frequency domain using the formalism of dynamic Bayesian networks. In contrast to classical multi-band modeling, this formalism leads to a probabilistic speech model which allows communications between the different sub-bands and, consequently, no recombination step is required in recognition. We develop efficient learning and decoding algorithms both for isolated and continuous speech recognition. We present illustrative experiments on isolated and connected digit recognition tasks. These experiments show that the this new approach is very promising in the field of noisy speech recognition.
- a – INRIA
- b – MIC2
- 1:
- INRIA – CNRS : UMR7503 – Université Henri Poincaré - Nancy I – Université Nancy II – Institut National Polytechnique de Lorraine (INPL)
- Domain : Computer Science/Other
- Keywords : speech recognition – bayesian networks || reconnaissance de la parole – réseaux bayésiens
- Internal note : A02-R-278 || daoudi02b
- Comment : Article dans revue scientifique avec comité de lecture.
- inria-00099530, version 1
- http://hal.inria.fr/inria-00099530
- oai:hal.inria.fr:inria-00099530
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- Submitted on: Tuesday, 26 September 2006 09:38:21
- Updated on: Thursday, 28 September 2006 15:22:46




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