2024
DOI: 10.1515/phon-2024-0015
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The Mason-Alberta Phonetic Segmenter: a forced alignment system based on deep neural networks and interpolation

Matthew C. Kelley,
Scott James Perry,
Benjamin V. Tucker

Abstract: Given an orthographic transcription, forced alignment systems automatically determine boundaries between segments in speech, facilitating the use of large corpora. In the present paper, we introduce a neural network-based forced alignment system, the Mason-Alberta Phonetic Segmenter (MAPS). MAPS serves as a testbed for two possible improvements we pursue for forced alignment systems. The first is treating the acoustic model as a tagger, rather than a classifier, motivated by the common understanding that segme… Show more

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