AI RESEARCH
Policy-Guided World Model Planning for Language-Conditioned Visual Navigation
arXiv CS.AI
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ArXi:2603.25981v1 Announce Type: cross Navigating to a visually specified goal given natural language instructions remains a fundamental challenge in embodied AI. Existing approaches either rely on reactive policies that struggle with long-horizon planning, or employ world models that suffer from poor action initialization in high-dimensional spaces. We present PiJEPA, a two-stage framework that combines the strengths of learned navigation policies with latent world model planning for instruction-conditioned visual navigation.