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Related Experiment Video

Updated: May 30, 2026

Behavioral Assessment of Hearing in 2 to 4 Year-old Children: A Two-interval, Observer-based Procedure Using Conditioned Play-based Responses
14:05

Behavioral Assessment of Hearing in 2 to 4 Year-old Children: A Two-interval, Observer-based Procedure Using Conditioned Play-based Responses

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Detection thresholds for gaps, overlaps, and no-gap-no-overlaps.

Mattias Heldner1

  • 1Department of Speech, Music and Hearing, KTH, Lindstedtsvägen 24, SE-100 44 Stockholm, Sweden. heldner@kth.se

The Journal of the Acoustical Society of America
|July 27, 2011
PubMed
Summary
This summary is machine-generated.

Researchers determined detection thresholds for speech gaps and overlaps, finding they align with a long vowel duration (120 ms). This aids in understanding and creating human-like dialogue systems by mapping perceived speech changes to acoustic signals.

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Area of Science:

  • Speech Perception
  • Acoustic Phonetics
  • Human-Computer Interaction

Background:

  • Understanding speaker changes is crucial for natural human-computer interaction.
  • Acoustic cues for transitions between speakers, such as gaps and overlaps, are not fully characterized.
  • Perceptual categories of speaker change (gaps, overlaps, no-gap-no-overlaps) need precise acoustic correlates.

Purpose of the Study:

  • To determine the detection thresholds for acoustic gaps and overlaps during speaker changes.
  • To establish the relationship between perceived speech events and their acoustic measurements.
  • To provide a basis for generating and interpreting realistic speech transitions in dialogue systems.

Main Methods:

  • Participants identified the presence of gaps and overlaps in speech stimuli.
  • Detection thresholds were measured based on stimulus duration and acoustic properties.
  • Subliminal events were classified as 'no-gap-no-overlaps'.

Main Results:

  • The detection thresholds for both gaps and overlaps were found to be approximately 120 ms.
  • This threshold duration corresponds to the length of a long vowel.
  • Acoustic detection thresholds were successfully mapped to perceptual categories.

Conclusions:

  • The 120 ms detection threshold provides a quantifiable link between acoustic events and perceived speaker changes.
  • These findings are essential for developing more natural and human-like spoken dialogue systems.
  • The established thresholds facilitate the generation and analysis of realistic speech dynamics.