A study of manual articulatory feature-based transcription of conversational speech
Karen Livescu, Xuemin Chi, Lisa Lavoie, Ari Bezman, Nash Borges, and Lisa Yung
This study investigates the manual labeling of speech, and in particular
conversational speech, at the articulatory feature level. A detailed
transcription, including subtleties such as overlapping or reduced gestures, is
useful for studying the great pronunciation variability in conversational
speech. This type of labeling also facilitates the testing of automatic
feature classifiers, such as those used in articulatory approaches to automatic
speech recognition. For this study, approximately 100 utterances drawn from the
Switchboard database have been transcribed using eight articulatory tiers rather
than the traditional single phonetic tier. The tiers include: place and degree
for up to two constrictions, nasality, glottal state, lip rounding, and vowel
quality. Two transcribers have labeled this set of utterances in a multi-pass
strategy, allowing for correction of errors. Preliminary analysis shows a high
degree of inter-transcriber agreement. Further analysis of the data is being
performed to address a number of questions, such as: How quickly and reliably
can this type of transcription be done? What are its advantages and
disadvantages relative to purely phone-based transcription? What
characteristics of the utterances correspond to high or low transcriber
agreement? What can be learned from the data regarding articulatory phenomena
such as reduction and asynchrony?
[
Poster presented at the Acoustical Society of America Meeting, Nov.-Dec. 2006 ]
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KarenLivescu - 14 Sep 2006