Categorization of Hindi phonemes by neural networks |
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Authors: | A. Dev S. S. Agrawal D. R. Choudhury |
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Affiliation: | (1) Department of Computer Science & Engineering, Department of Training and Technical Education, Ambedkar Institute of Technology, Shakarpur, 110092 Delhi, India;(2) CSIR Complex, CSIO (Delhi Centre), Pusa Campus, 110012 New Delhi, India;(3) Department of Computer Engineering, Delhi College of Engineering, Bawana Road, Samaipur Badli, Delhi, India |
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Abstract: | The prime objective of this paper is to conduct phoneme categorization experiments for Indian languages. In this direction a major effort has been made to categorize Hindi phonemes using a time delay neural network (TDNN), and compare the recognition scores with other languages. A total of six neural nets aimed at the major coarse of phonetic classes in Hindi were trained. Evaluation of each net on 350 training tokens and 40 test tokens revealed a 99% recognition rate for vowel classes, 87% for unvoiced stops, 82% for voiced stops, 94.7% for semi vowels, 98.1% for nasals and 96.4% for fricatives. A new feature vector normalisation technique has been proposed to improve the recognition scores. |
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Keywords: | Aspiration Phoneme recognition Retroflexion Time delay Neural network |
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