AW4RE: Active World Model with 4D-informed Retrieval for Exploration and Awareness
Abstract
Physical awareness, especially in a large and dynamic environment, is shaped by sensing decisions that determine observability across space, time, and scale, while observations impact the quality of sensing decisions. This loopy information structure makes physical awareness a fundamentally challenging decision problem with partial observations. While in the past decade we have witnessed the unprecedented success of reinforcement learning (RL) in problems with full observability, decision problems with partial observation, such as POMDPs, remain largely open: real-world explorations are excessively costly, while sim-to-real pipeline suffer from unobserved viewpoints.
We introduce AW4RE (Active World-model with 4D-informed Retrieval for Exploration), an awareness-centric generative world model that provides a sensor-native surrogate environment for exploring sensing queries. Conditioned on a queried sensing action, AW4RE estimates the action-conditioned observation process. This is done by combining 4D-informed evidence retrieval, action-conditioned geometric support with temporal coherence, and conditional generative completion. Experiments demonstrate that AW4RE produces more grounded and consistent predictions than geometry-aware generative baselines under extreme viewpoint shifts, temporal gaps, and sparse geometric support.
Results
Scale change
(Zoomed-in Camera Trajectory)
Counterfactual View
(Corner-focused view trajectory)
Next Time Steps Estimation
Previous Time Steps Estimation
AW4RE provides: 🟪 History-Consistent Observation Generation 🟦 Multi-View Consistency 🟩 Sensor-Aware Temporal Reasoning 🟥 Generalization Beyond Observations 🟨 Robustness to Large Temporal Gaps
Quantitative Results
Spatial Exploration:
Temporal Exploration:
How it Works
AW4RE is a world model that takes a history of past observations and actions and a new sensing action and outputs the observation that would be seen under that action.
BibTeX
@inproceedings{vaezpour2026aw4re,
title={AW4RE: Active World-Model with 4D-informed Retrieval for Exploration and Awareness},
author={Elaheh Vaezpour and Amirhosein Javadi and Tara Javidi},
booktitle={2nd Workshop on World Models, International Conference on Learning Representations (ICLR)},
year={2026},
month={April},
url={https://kavai.world/index.html}
}