DFKI-LT - Robust processing of situated spoken dialogue

Pierre Lison, Geert-Jan Kruijff
Robust processing of situated spoken dialogue
2 Proceedings of the 32nd German Conference on Artificial Intelligence, Paderborn, Germany, Springer Lecture Notes in Artificial Intelligence, 2009
 
Spoken dialogue is notoriously hard to process with standard language processing technologies. Dialogue systems must indeed meet two major challenges. First, natural spoken dialogue is replete with disfluent, partial, elided or ungrammatical utterances. Second, speech recognition remains a highly error-prone task, especially for complex, open-ended domains. We present an integrated approach for addressing these two issues, based on a robust incremental parser. The parser takes word lattices as input and is able to handle ill-formed and misrecognised utterances by selectively relaxing its set of grammatical rules. The choice of the most relevant interpretation is then realised via a discriminative model augmented with contextual information. The approach is fully implemented in a dialogue system for autonomous robots. Evaluation results on a Wizard of Oz test suite demonstrate very significant improvements in accuracy and robustness compared to the baseline.
 
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