Continuous speech recognition and syntactic processing in iranian farsi language

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Abstract

In this paper, the architecture of the first Iranian Farsi continuous speech recognizer and syntactic processor is introduced. In this system, by extracting suitable features of speech signal (cepstral, delta-cepstral, energy and zero-crossing rate) and using a hydrid architecture of neural networks (a Self-Organizing Feature Map, SOFM, at the first stage and a Multi-Layer Perceptron, MLP, at the second stage) the Iranian Farsi phonemes are recognized. Then the string of phonemes are corrected, segmented and converted to formal text by using a non-stochastic method. For syntactic processing, the symbolic (by using artificial intelligence techniques) and connectionist (by using artificial neural networks) approaches are used to determine the correctness, position and the kind of syntactic errors in Iranian Farsi sentences, as well. © 1997 Kluwer Academic Publishers.

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CITATION STYLE

APA

Sheikhan, M. (1997). Continuous speech recognition and syntactic processing in iranian farsi language. International Journal of Speech Technology, 1(2), 135–141. https://doi.org/10.1007/BF02277194

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