Recognition of human speech using q-Bernstein polynomials
@article{Karaci2010RecognitionOH, title={Recognition of human speech using q-Bernstein polynomials}, author={A. Karaci and Ibrahim B{\"u}y{\"u}kyazici and Muharrem Akt{\"u}men}, journal={International Journal of Computer Applications}, year={2010}, volume={2}, pages={22-28} }
Recognition of human speech has long been a hot topic among artificial intelligence and signal processing researchers. In this paper, Pattern recognition and q-Bernstein polynomials have been combined to create computer software designed for the recognition of human speech, and the main principles of speech recognition have been explained in a systematic content. qBernstein polynomials, which are mathematical operators, have been applied for pattern recognition, and a new method has thus been… CONTINUE READING
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