English

Self-imitating Feedback Generation Using GAN for Computer-Assisted Pronunciation Training

Computation and Language 2019-04-23 v1

Abstract

Self-imitating feedback is an effective and learner-friendly method for non-native learners in Computer-Assisted Pronunciation Training. Acoustic characteristics in native utterances are extracted and transplanted onto learner's own speech input, and given back to the learner as a corrective feedback. Previous works focused on speech conversion using prosodic transplantation techniques based on PSOLA algorithm. Motivated by the visual differences found in spectrograms of native and non-native speeches, we investigated applying GAN to generate self-imitating feedback by utilizing generator's ability through adversarial training. Because this mapping is highly under-constrained, we also adopt cycle consistency loss to encourage the output to preserve the global structure, which is shared by native and non-native utterances. Trained on 97,200 spectrogram images of short utterances produced by native and non-native speakers of Korean, the generator is able to successfully transform the non-native spectrogram input to a spectrogram with properties of self-imitating feedback. Furthermore, the transformed spectrogram shows segmental corrections that cannot be obtained by prosodic transplantation. Perceptual test comparing the self-imitating and correcting abilities of our method with the baseline PSOLA method shows that the generative approach with cycle consistency loss is promising.

Keywords

Cite

@article{arxiv.1904.09407,
  title  = {Self-imitating Feedback Generation Using GAN for Computer-Assisted Pronunciation Training},
  author = {Seung Hee Yang and Minhwa Chung},
  journal= {arXiv preprint arXiv:1904.09407},
  year   = {2019}
}
R2 v1 2026-06-23T08:45:14.849Z