• Title of article

    Experimental Study of Discriminative Adaptive Training and MLLR for Automatic Pronunciation Evaluation

  • Author/Authors

    SONG, Yin Tsinghua University - Institute of Microelectronics, China , LIANG, Weiqian Tsinghua University - Department of Electronic Engineering, China

  • From page
    189
  • To page
    193
  • Abstract
    A stronger canonical model was developed to improve the performance of automatic pronunciation evaluations. Three different strategies were investigated with speaker adaptive training to normalize variations among speakers, minimum phone error training to identify easily confused phones and maximum likelihood linear regression (MLLR) adaptation to compensate for accent variations between native and non-native speakers. The three schemes were combined to improve the correlation coefficient between machine scores and human scores from 0.651 to 0.679 on the sentence level and from 0.788 to 0.822 on the speaker level.
  • Keywords
    discriminative adaptive training (DAT) , speaker adaptive training (SAT) , minimum phone error (MPE) , automatic pronunciation evaluation (APE)
  • Journal title
    Tsinghua Science and Technology
  • Journal title
    Tsinghua Science and Technology
  • Record number

    2535367