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Please use this identifier to cite or link to this item: http://hdl.handle.net/1842/1991

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Title: Articulatory feature recognition using dynamic Bayesian networks.
Authors: Frankel, Joe
Wester, Mirjam
King, Simon
Issue Date: 2007
Citation: J. Frankel, M. Wester, and S. King. Articulatory feature recognition using dynamic Bayesian networks. Computer Speech & Language, 21(4):620-640, October 2007.
Abstract: We describe a dynamic Bayesian network for articulatory feature recognition. The model is intended to be a component of a speech recognizer that avoids the problems of conventional ``beads-on-a-string'' phoneme-based models. We demonstrate that the model gives superior recognition of articulatory features from the speech signal compared with a state of- the art neural network system. We also introduce a training algorithm that offers two major advances: it does not require time-aligned feature labels and it allows the model to learn a set of asynchronous feature changes in a data-driven manner.
Keywords: speech technology
URI: http://hdl.handle.net/1842/1991
Appears in Collections:CSTR publications
Linguistics and English Language publications

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