IntentReact: Guiding Reactive Object-Centric Navigation via Topological Intent

arXiv cs.RO / 3/27/2026

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Key Points

  • IntentReact addresses a key limitation in object-goal visual navigation: purely reactive local control from egocentric observations can fail to reduce the globally planned topological distance to the goal.
  • The method introduces an intent signal—low-dimensional directional guidance derived from global topological maps—to condition a learned waypoint prediction policy for topologically consistent movement.
  • By injecting this compact global-to-local interface, the robot can reorient quickly when its local perception is misleading, improving long-horizon navigation behavior.
  • Experiments reported in the paper show higher navigation success rates and better execution quality than prior object-centric navigation approaches.
  • Overall, the work highlights how intent-based guidance can bridge global semantic/topological planning with robust reactive control under partial observability.

Abstract

Object-goal visual navigation requires robots to reason over semantic structure and act effectively under partial observability. Recent approaches based on object-level topological maps enable long-horizon navigation without dense geometric reconstruction, but their execution remains limited by the gap between global topological guidance and local perception-driven control. In particular, local decisions are made solely from the current egocentric observation, without access to information beyond the robot's field of view. As a result, the robot may persist along its current heading even when initially oriented away from the goal, moving toward directions that do not decrease the global topological distance. In this work, we propose IntentReact, an intent-conditioned object-centric navigation framework that introduces a compact interface between global topological planning and reactive object-centric control. Our approach encodes global topological guidance as a low-dimensional directional signal, termed intent, which conditions a learned waypoint prediction policy to bias navigation toward topologically consistent progression. This design enables the robot to promptly reorient when local observations are misleading, guiding motion toward directions that decrease global topological distance while preserving the reactivity and robustness of object-centric control. We evaluate the proposed framework through extensive experiments, demonstrating improved navigation success and execution quality compared to prior object-centric navigation methods.