Korean Phoneme Recognition Using Neural Networks

신경회로망 이용한 한국어 음소 인식

  • 김동국 (삼성전자 연구소) ;
  • 정차균 (포항공대 전자전기공학과) ;
  • 정홍 (포항공대 전자전기공학과)
  • Published : 1991.04.01

Abstract

Since 70's, efficient speech recognition methods such as HMM or DTW have been introduced primarily for speaker dependent isolated words. These methods however have confronted with difficulties in recognizing continuous speech. Since early 80's, there has been a growing awareness that neural networks might be more appropriate for English and Japanese phoneme recognition using neural networks. Dealing with only a part of vowel or consonant set, Korean phoneme recognition still remains on the elementary level. In this light, we develop a system based on neural networks which can recognize major Korean phonemes. Through experiments using two neural networks, SOFM and TDNN, we obtained remarkable results. Especially in the case of using TDNN, the recognition rate was estimated about 93.78% for training data and 89.83% for test data.

Keywords