Fundamental Frequency Feature Normalization and Data Augmentation for Child Speech Recognition
Automatic speech recognition (ASR) systems for young children are needed due to the importance of age-appropriate educational technology. Because of the lack of publicly available young child speech data, feature extraction strategies such as feature normalization and data augmentation must be considered to successfully train child ASR systems. This study proposes a novel technique for child ASR using both feature normalization and data augmentation methods based on the relationship between formants and fundamental frequency (f_o). Both the f_o feature normalization and data augmentation techniques are implemented as a frequency shift in the Mel domain. These techniques are evaluated on a child read speech ASR task. Child ASR systems are trained by adapting a BLSTM-based acoustic model trained on adult speech. Using both f_o normalization and data augmentation results in a relative word error rate (WER) improvement of 19.3 Corpus, and the resulting child ASR system achieves the best WER currently reported on this corpus.
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