Abstract We present GUIDER (Global User Intent Dual-phase Estimation for Robots), a dual-phase probabilistic framework for intent inference in mobile manipulation that operates without predefined goals. A Synergy Map fuses motion evidence with an occupancy grid to rank likely interaction areas during navigation. After arrival, perception merges U ^2 2 -Net and FastSAM saliency with three geometric grasp-feasibility tests; an end-effector kinematics-aware update then evolves object probabilities in real time. In 100 teleoperation trials (20 participants × 5 tasks) in Isaac Sim, GUIDER outperformed baselines. During navigation, median stability was 100% across tasks (BOIR, the baseline, had an overall median of 89. 85%), with large gains under redirection (BOIR 59. 67–63. 49% in T2/T5). During manipulation, median stability was 100% in all tasks, while Trajectron (manipulation baseline) dropped to 62. 68% for tool grasping (T4). GUIDER yielded earlier confident object predictions in geometry-constrained settings (T5: 20. 31 s remaining vs 3. 89 s). Ablations confirm the need for the multi-horizon synergy map, the grasp-feasibility checks, and temporal end-effector probability evolution. GUIDER provides a unified probabilistic backbone spanning base and arm, supporting future variable-autonomy controllers.
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Cesar Alan Contreras
Manolis Chiou
Alireza Rastegarpanah
Journal of Intelligent & Robotic Systems
University of Birmingham
Queen Mary University of London
Aston University
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Contreras et al. (Thu,) studied this question.
www.synapsesocial.com/papers/69abc1c65af8044f7a4eabc7 — DOI: https://doi.org/10.1007/s10846-026-02362-4