TRAFA: Anticipating User Actions to Reduce Errors in Procedural Tasks with Predictive Feedback 文章

ArXiv CS.AI2026-05-26NEWSen作者: Sassan Mokhtar, Lars Doorenbos, Fatemeh Jabbari, Marius Bock, Dominik Bach, Juergen Gall

摘要

arXiv:2605.24526v1 Announce Type: cross Abstract: Interactive assistance systems typically provide feedback after an action has been completed, supporting error recovery but not preventing the error itself. We present TRAFA, a real-time predictive feedback system for procedural tasks that intervenes before errors are committed. TRAFA operationalizes predictive feedback through a Track-Forecast-Act framework that tracks hand and object state, forecasts user motion conditioned on scene context, and triggers feedback when a predicted action is likely to violate task constraints. We instantiate this pipeline in a sequential assembly setting and evaluate it through both technical benchmarking and a controlled user study against conventional reactive feedback. Our results show that predictive feedback improves task accuracy and efficiency while maintaining a comparable number of feedback events.

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