LASER: Learning Active Sensing for Continuum Field Reconstruction

arXiv cs.LG / 4/22/2026

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Key Points

  • The paper introduces LASER, a closed-loop active sensing framework for reconstructing high-fidelity continuum physical fields from sparse, constrained measurements.
  • LASER formulates active sensing as a Partially Observable Markov Decision Process (POMDP) and uses a latent world model to represent continuum dynamics.
  • A reinforcement learning policy uses intrinsic reward from the latent model to run “what-if” sensing simulations in imagination space and decide sensor movements.
  • By conditioning actions on predicted latent states, LASER actively moves toward high-information regions that may not be evident from current observations.
  • Experiments on multiple continuum fields show LASER outperforms both static sensor layouts and offline-optimized strategies, improving reconstruction quality under sparsity.

Abstract

High-fidelity measurements of continuum physical fields are essential for scientific discovery and engineering design but remain challenging under sparse and constrained sensing. Conventional reconstruction methods typically rely on fixed sensor layouts, which cannot adapt to evolving physical states. We propose LASER, a unified, closed-loop framework that formulates active sensing as a Partially Observable Markov Decision Process (POMDP). At its core, LASER employs a continuum field latent world model that captures the underlying physical dynamics and provides intrinsic reward feedback. This enables a reinforcement learning policy to simulate ''what-if'' sensing scenarios within a latent imagination space. By conditioning sensor movements on predicted latent states, LASER navigates toward potentially high-information regions beyond current observations. Our experiments demonstrate that LASER consistently outperforms static and offline-optimized strategies, achieving high-fidelity reconstruction under sparsity across diverse continuum fields.