Current spoken dialogue systems (SDS) often behave inappropriately as they do not feature the same capabilities to detect speech recognition errors and handle them adequately as is achieved in human conversation. Adopting human abilities to identify perception problems and strategies to recover from them would enable SDS to show more constructive and naturalistic behavior. We investigated human error detection and error handling strategies within the context of a SDS for pedestrian assistance. The human behavior serves as a model for future algorithms that could yield reduced error rates in speech processing. The results contribute to a better understanding which knowledge humans employ to build up interpretations from perceived words and establish their confidence in perception and interpretation. The findings provide useful input for SDS developers and enable researchers to estimate the potential benefit of future research avenues.
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