OVAL: Open-Vocabulary Augmented Memory Model for Lifelong Object Goal Navigation

arXiv cs.RO / 4/15/2026

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Key Points

  • The paper introduces OVAL, an open-vocabulary augmented memory framework aimed at improving Object Goal Navigation in unseen environments over long time horizons (lifelong tasks).
  • It addresses shortcomings of prior methods by enabling more flexible, semantically open memory representations for continual navigation targets.
  • OVAL includes “memory descriptors” for structured memory management and a probability-based exploration method using multi-value frontier scoring to boost exploration efficiency.
  • Experimental results on multiple settings are reported to show the system’s efficiency and robustness for long-term, continual object navigation.

Abstract

Object Goal Navigation (ObjectNav) refers to an agent navigating to an object in an unseen environment, which is an ability often required in the accomplishment of complex tasks. While existing methods demonstrate proficiency in isolated single object navigation, their limitations emerge in the restricted applicability of lifelong memory representations, which ultimately hinders effective navigation toward continual targets over extended periods. To address this problem, we propose OVAL, a novel lifelong open-vocabulary memory framework, which enables efficient and precise execution of long-term navigation in semantically open tasks. Within this framework, we introduce memory descriptors to facilitate structured management of the memory model. Additionally, we propose a novel probability-based exploration strategy, utilizing a multi-value frontier scoring to enhance lifelong exploration efficiency. Extensive experiments demonstrate the efficiency and robustness of the proposed system.