CVDec 25, 2025

AstraNav-World: World Model for Foresight Control and Consistency

arXiv:2512.21714v18 citationsh-index: 4
Originality Highly original
AI Analysis

This addresses the challenge of reliable navigation for embodied agents in open-ended real-world settings, representing a novel method rather than an incremental improvement.

The paper tackles the problem of embodied navigation in open, dynamic environments by proposing AstraNav-World, an end-to-end world model that jointly reasons about future visual states and action sequences, resulting in improved trajectory accuracy and higher success rates across benchmarks with exceptional zero-shot capabilities in real-world testing.

Embodied navigation in open, dynamic environments demands accurate foresight of how the world will evolve and how actions will unfold over time. We propose AstraNav-World, an end-to-end world model that jointly reasons about future visual states and action sequences within a unified probabilistic framework. Our framework integrates a diffusion-based video generator with a vision-language policy, enabling synchronized rollouts where predicted scenes and planned actions are updated simultaneously. Training optimizes two complementary objectives: generating action-conditioned multi-step visual predictions and deriving trajectories conditioned on those predicted visuals. This bidirectional constraint makes visual predictions executable and keeps decisions grounded in physically consistent, task-relevant futures, mitigating cumulative errors common in decoupled "envision-then-plan" pipelines. Experiments across diverse embodied navigation benchmarks show improved trajectory accuracy and higher success rates. Ablations confirm the necessity of tight vision-action coupling and unified training, with either branch removal degrading both prediction quality and policy reliability. In real-world testing, AstraNav-World demonstrated exceptional zero-shot capabilities, adapting to previously unseen scenarios without any real-world fine-tuning. These results suggest that AstraNav-World captures transferable spatial understanding and planning-relevant navigation dynamics, rather than merely overfitting to simulation-specific data distribution. Overall, by unifying foresight vision and control within a single generative model, we move closer to reliable, interpretable, and general-purpose embodied agents that operate robustly in open-ended real-world settings.

Foundations

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