Volume : V, Issue : VII, July - 2015
OPTIMAL APPROACH FOR REAL TIME CONTINUOUS SPEECH RECOGNITION SYSTEM(HMM)
Dr. C. Rajeshkumar
Abstract :
We have developed the 30K word real time continuous speech recognition based on a context dependent Hidden Markov Model (HMM). Here we are using a 30K word language model instead of previously using 20K[15] word speech recognition. It has opened new opportunities for speech recognition innovations. In 20K [15]word speech recognition has been designed with limited vocabulary .i.e., 800 words[9] but in this 30K word language model to be designed by using the high level vocabulary. In this system contains two parts. One is training and second is testing. First different input speech signals will be stored in training kit. Second will give different speech signals for testing, after compå with training kit it will display final output. Gaussian Mixture Models (GMMs)[3] are used to represent the state of output probability of HMMs.
Keywords :
Article:
Download PDF
DOI : 10.36106/ijar
Cite This Article:
Dr.C.Rajeshkumar Optimal Approach for Real Time Continuous Speech
Recognition System(Hmm) Indian Journal of Applied Research, Vol.5, Issue : 7 July 2015
Number of Downloads : 424
Dr.C.Rajeshkumar Optimal Approach for Real Time Continuous Speech Recognition System(Hmm) Indian Journal of Applied Research, Vol.5, Issue : 7 July 2015
Our Other Journals...
-
International Journal of
Scientific Research Visit Website -
PARIPEX Indian Journal
of Research Visit Website -
Global Journal for
Research Analysis Visit Website