End-to-end Whispered Speech Recognition with Frequency-weighted Approaches and Layer-wise Transfer Learning
Whispering is an important mode of human speech, but no end-to-end recognition results for it were reported yet, probably due to the scarcity of available whispered speech data. In this paper, we present several approaches for end-to-end (E2E) recognition of whispered speech considering the special characteristics of whispered speech and the scarcity of data. This includes a frequency-weighted SpecAugment policy and a frequency-divided CNN feature extractor for better capturing the high frequency structures of whispered speech, and a layer-wise transfer learning approach to pre-train a model with normal speech then fine-tuning it with whispered speech to bridge the gap between whispered and normal speech. We achieve an overall relative reduction of 19.8 The results indicate as long as we have a good E2E model pre-trained on normal speech, a relatively small set of whispered speech may suffice to obtain a reasonably good E2E whispered speech recognizer.
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