ISCA Archive Interspeech 2017
ISCA Archive Interspeech 2017

Use of Graphemic Lexicons for Spoken Language Assessment

K.M. Knill, Mark J.F. Gales, K. Kyriakopoulos, A. Ragni, Y. Wang

Automatic systems for practice and exams are essential to support the growing worldwide demand for learning English as an additional language. Assessment of spontaneous spoken English is, however, currently limited in scope due to the difficulty of achieving sufficient automatic speech recognition (ASR) accuracy. “Off-the-shelf” English ASR systems cannot model the exceptionally wide variety of accents, pronunciations and recording conditions found in non-native learner data. Limited training data for different first languages (L1s), across all proficiency levels, often with (at most) crowd-sourced transcriptions, limits the performance of ASR systems trained on non-native English learner speech. This paper investigates whether the effect of one source of error in the system, lexical modelling, can be mitigated by using graphemic lexicons in place of phonetic lexicons based on native speaker pronunciations. Graphemic-based English ASR is typically worse than phonetic-based due to the irregularity of English spelling-to-pronunciation but here lower word error rates are consistently observed with the graphemic ASR. The effect of using graphemes on automatic assessment is assessed on different grader feature sets: audio and fluency derived features, including some phonetic level features; and phone/grapheme distance features which capture a measure of pronunciation ability.

doi: 10.21437/Interspeech.2017-978

Cite as: Knill, K.M., Gales, M.J.F., Kyriakopoulos, K., Ragni, A., Wang, Y. (2017) Use of Graphemic Lexicons for Spoken Language Assessment. Proc. Interspeech 2017, 2774-2778, doi: 10.21437/Interspeech.2017-978

  author={K.M. Knill and Mark J.F. Gales and K. Kyriakopoulos and A. Ragni and Y. Wang},
  title={{Use of Graphemic Lexicons for Spoken Language Assessment}},
  booktitle={Proc. Interspeech 2017},