Thinking with Imagination: Agentic Visual Spatial Reasoning with World Simulators
Abstract
Astra is an agentic spatial reasoning framework that enhances Vision-Language Models with action-conditioned visual imagination by coupling a reinforcement learning-trained policy with a world simulator for generating novel-view observations.
While Vision-Language Models (VLMs) have shown strong visual reasoning capabilities, their spatial reasoning abilities remain largely constrained to the observed images and text-oriented chain-of-thought. They often struggle to infer unobserved layouts, maintain cross-view consistency, and reason from alternative viewpoints when only limited egocentric observations are available. In this work, we study this problem as thinking with imagination, where a VLM actively acquires imagined visual evidence by interacting with a world simulator during reasoning. We propose Astra, an agentic spatial reasoning framework that empowers VLMs with action-conditioned visual imagination. Specifically, Astra couples Astra-VL, an RL-trained VLM policy, with Astra-WM, a Bagel-based world simulator that generates novel-view observations from context images and natural-language camera motions. To provide reliable imagined evidence, Astra-WM is trained with view consistency tuning to improve pose and content consistency across views. In the RL stage, we propose a world-simulator-in-the-loop two-phase RL curriculum to stabilize tool-use exploration and advance the model's ability to invoke the simulator only when imagined observations improve over direct answering. Experiments demonstrate that both the world simulator and the agentic policy are necessary: Astra-WM improves simulator-augmented Gemini-3-Flash on MMSI-Bench from 45.1 to 49.5, while Astra-VL improves the Qwen3-VL backbone from 29.8 to 38.8 on MMSI-Bench and from 36.8 to 42.7 on MindCube. These results show that imagined observations can provide useful spatial evidence, but effective world-model-augmented reasoning requires learning when, where, and how to imagine.
Community
Spatial reasoning from multi-view images often requires evidence that is not visible in the given observations. Astra studies this problem as thinking with imagination: a VLM actively queries a world simulator for missing viewpoints and uses the returned imagined observations to answer spatial questions. The system couples Astra-VL, an RL-trained Qwen3-VL-based policy, with Astra-WM, a Bagel-based simulator trained for view consistency.
This framing resonates with enactive views of perception: understanding is not only internal processing over fixed inputs, but an active process of seeking the observations needed for skillful behavior. Astra brings this idea to VLMs through simulator-mediated interaction, turning visual spatial reasoning into active visual evidence acquisition.
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