Publication | Closed Access
Speech Recognition using Artificial Neural Networks and Hidden Markov Models
35
Citations
7
References
2008
Year
Unknown Venue
Abstract—In this paper, we compare two different methods for automatic Arabic speech recognition for isolated words and sentences. Isolated word/sentence recognition was performed using cepstral feature extraction by linear predictive coding, as well as Hidden Markov Models (HMM) for pattern training and classification. We implemented a new pattern classification method, where we used Neural Networks trained using the Al-Alaoui Algorithm. This new method gave comparable results to the already implemented HMM method for the recognition of words, and it has overcome HMM in the recognition of sentences. The speech recognition system implemented is part of the Teaching and Learning Using Information Technology (TLIT) project which would implement a set of reading lessons to assist adult illiterates in developing better reading capabilities. Index Terms—Al-Alaoui Algorithm, Artificial Neural Networks, cepstral feature extraction, hidden Markov
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