Online Sequence Alignment for Real-Time Audio Transcription by Non-Experts
Lasecki, Walter S. (University of Rochester) | Miller, Christopher D. (University of Rochester) | Borrello, Donato (Univeristy of Rochester) | Bigham, Jeffrey P. (University of Rochester)
Real-time transcription provides deaf and hard of hearing people visual access to spoken content, such as classroom instruction, and other live events. Currently, the only reliable source of real-time transcriptions are expensive, highly-trained experts who are able to keep up with speaking rates. Automatic speech recognition is cheaper but produces too many errors in realistic settings. We introduce a new approach in which partial captions from multiple non-experts are combined to produce a high-quality transcription in real-time. We demonstrate the potential of this approach with data collected from 20 non-expert captionists.
Jul-21-2012
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