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Interaction-aware Conformal Prediction for Crowd Navigation

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arxiv 2502.06221 v1 pith:7ZCHB5J6 submitted 2025-02-10 cs.RO

Interaction-aware Conformal Prediction for Crowd Navigation

classification cs.RO
keywords motionhumannavigationrobotcrowdpredictionuncertaintyconformal
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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During crowd navigation, robot motion plan needs to consider human motion uncertainty, and the human motion uncertainty is dependent on the robot motion plan. We introduce Interaction-aware Conformal Prediction (ICP) to alternate uncertainty-aware robot motion planning and decision-dependent human motion uncertainty quantification. ICP is composed of a trajectory predictor to predict human trajectories, a model predictive controller to plan robot motion with confidence interval radii added for probabilistic safety, a human simulator to collect human trajectory calibration dataset conditioned on the planned robot motion, and a conformal prediction module to quantify trajectory prediction error on the decision-dependent calibration dataset. Crowd navigation simulation experiments show that ICP strikes a good balance of performance among navigation efficiency, social awareness, and uncertainty quantification compared to previous works. ICP generalizes well to navigation tasks under various crowd densities. The fast runtime and efficient memory usage make ICP practical for real-world applications. Code is available at https://github.com/tedhuang96/icp.

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Cited by 1 Pith paper

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  1. Safe Planning in Interactive Environments via Iterative Policy Updates and Adversarially Robust Conformal Prediction

    eess.SY 2025-11 conditional novelty 7.0

    The work develops an iterative safe planner that adjusts conformal prediction bounds across policy updates via sensitivity analysis to maintain distribution-free safety guarantees despite interaction-induced distribut...