Subword-based modeling for handling OOV words inkeyword spotting

ICASSP(2014)

引用 34|浏览244
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摘要
This work compares ASR decoding at different subword levels crossed with alternative keyword search strategies to handle the OOV issue for keyword spotting in the low-resource setting. We show that a morpheme-based subword modeling approach is effective in recovering OOV keywords within a Turkish low-resource keyword spotting task, where mixed word and morpheme decoding approach outperforms the traditional subword-based search from word-decoded lattices that are broken down to subword lattices. Furthermore, unsupervised learning of morphology works almost as well as a rule-based system designed for the language despite the low-resource condition. A staged keyword search strategy benefits from both methods of morphological analysis.
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关键词
subword based modeling,speech recognition,oov words inkeyword spotting,vocabulary,automatic speech recognition,morpheme based subword modeling approach,morphology,keyword spotting,asr decoding,unsupervised learning,lattices,speech processing,speech,decoding
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