Combining Words and Speech Prosody for Automatic Topic Segmentation

Citation

Stolcke, A., Shriberg, E., Hakkani-Tür, D., Tür, G., Rivlin, Z. E., & Sönmez, K. (1999, July). Combining words and speech prosody for automatic topic segmentation. In Proceedings of the DARPA Broadcast News Workshop (pp. 61-64).

Abstract

We present a probabilistic model that uses both prosodic and lexical cues for the automatic segmentation of speech into topic units. The approach combines hidden Markov models, statistical language models, and prosody-based decision trees. Lexical information is obtained from a speech recognizer, and prosodic features are extracted automatically from speech waveforms. We evaluate our approach on the Broadcast News corpus, using standard evaluation metrics. Results show that the prosodic model alone outperforms the word-based segmentation method. Furthermore, we achieve an additional reduction in error by combining the prosodic and word-based knowledge sources.


Read more from SRI

  • surgeons around a surgical robot

    The SRI research behind today’s surgical robotics

    Intuitive’s da Vinci 5 system represents a major leap in robotic-assisted medicine. It all started at SRI, which continues to advance teleoperation technologies.

  • a collage of digital graphs

    A banner year for quantum

    SRI-managed QED-C’s annual report on quantum trends captures an industry accelerating rapidly from technical promise toward major global impact.

  • ICE Cube containing SRI’s aerogel experiment, photographed prior to launch. Source: Aerospace Applications North America

    An SRI carbon capture experiment launches into space

    By synthesizing carbon-absorbing aerogels in microgravity, SRI research will give us a rare glimpse into how these materials could be radically improved.