Utilizing TTS Synthesized Data for Efficient Development of Keyword Spotting Model
This paper explores the use of TTS synthesized training data for KWS (keyword spotting) task while minimizing development cost and time. Keyword spotting models require a huge amount of training data to be accurate, and obtaining such training data can be costly. In the current state of the art, TTS...
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Zusammenfassung: | This paper explores the use of TTS synthesized training data for KWS (keyword
spotting) task while minimizing development cost and time. Keyword spotting
models require a huge amount of training data to be accurate, and obtaining
such training data can be costly. In the current state of the art, TTS models
can generate large amounts of natural-sounding data, which can help reducing
cost and time for KWS model development. Still, TTS generated data can be
lacking diversity compared to real data. To pursue maximizing KWS model
accuracy under the constraint of limited resources and current TTS capability,
we explored various strategies to mix TTS data and real human speech data, with
a focus on minimizing real data use and maximizing diversity of TTS output. Our
experimental results indicate that relatively small amounts of real audio data
with speaker diversity (100 speakers, 2k utterances) and large amounts of TTS
synthesized data can achieve reasonably high accuracy (within 3x error rate of
baseline), compared to the baseline (trained with 3.8M real positive
utterances). |
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DOI: | 10.48550/arxiv.2407.18879 |