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This paper describes AaltoASR's speech recognition system for the INTERSPEECH2020 shared task on Automatic Speech Recognition (ASR) for non-native's speech. The task is to recognize non-native speech from children of age groups given a limited amount of speech. Moreover, the speech being has false starts transcribed as partial words, which in the test leads to unseen partial words. To cope with these two, we investigate a data augmentation-based approach. Firstly, we the prosody-based data augmentation to supplement the audio data. , we simulate false starts by introducing partial-word noise in the modeling corpora creating new words. Acoustic models trained on-based augmented data outperform the models using the baseline recipe or SpecAugment-based augmentation. The partial-word noise also helps to the baseline language model. Our ASR system, a combination of these, is placed third in the evaluation period and achieves the word error of 18. 71%. Post-evaluation period, we observe that increasing the amounts prosody-based augmented data leads to better performance. Furthermore, low-confidence-score words from hypotheses can lead to further gains. two improvements lower the ASR error rate to 17. 99%.
Kathania et al. (Sat,) studied this question.