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      • HMM에 의한 실시간 연속음성 인식시스템 구현에 관한 연구

        이영재 동아대학교 1996 국내박사

        RANK : 248655

        This paper is a study on the composition of Real-Time Continuous Speech Recognition System for Man-Machine Interface and it examines the posibility that applies to automatic system. HMM model can be classified into Continuous Distribution HMM and Discrete Duration Control HMM, and the recognition algorithm can be classified into O(n)DP method and One Pass DP method in order to choose HMM model and recognition algorithm. The simulation is implemented for 35 continuous speech samples of four connected spoken digits in two cases which are divided into two submodels according to whether the regression coefficients are included or not. As a result of the simulation, the average recognition rates show 93.0% and 80.5% respectively for two cases; the one is Continuous Distribution HMM model which includes regression coefficients and the other does not include when O(n)DP method is used. Average recognition rates show 93.4% and 84.4% respectively for two cases the one is Discrete Duration Control HMM model which includes regression coefficients and the other does not include when O(n)DP method is used. When HMM model does not include regression coefficients, the average recognition rate of One Pass DP method is better improved than that of O(n)DP method by 12%. The Continuous Speech Recognition System is composed of Continuous Distribution HMM model and algorithm of One Pass DP method which are chosen by the consideration of computing time and recognition rate according to the result of simulation. Continuous Speech Recognition System is composed so that it may detect start point and end point of speech data which are converted into samples by 10 KHz, 8 bit A/D within real time, then so that it may recognize them by One Pass DP method, display the result of recognition on PC monitor and at same time send control data to Interface. HMM models are created by training for continuous speech samples which are control words, area names and digital sounds. In the result of experiment by Continuous Speech Recognition System, there are some kind of errors which are insertion, replacement and deletion of one syllable, but it examined the posibility that can be applied to Man-Machine Interface on automatic system if post-process is performed for recognition.

      • 음소 HMM 모델링 방법의 개선에 관한 연구

        이철환 목포대학교 대학원 1995 국내석사

        RANK : 232238

        In this thesis, we examine the techniques which can realize the context-dependent phoneme modeling to model co-articulatory effects of korean language, The context-independent phoneme models are constructed using 51 phoneme-like units. Interpolation method is studied to combine the detailed context-dependent phoneme models with robust context-independent phoneme models and the concatenation of these interpolated phoneme models is applied to the isolated word recognition. The experiment results show that the context-dependent models lead to about 3.5% recognition improvement for the context-independent phoneme models.

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