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arXiv 提交日期: 2026-04-21
📄 Abstract - LASER: Learning Active Sensing for Continuum Field Reconstruction

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.

顶级标签: reinforcement learning systems model training
详细标签: active sensing field reconstruction latent world model pomdp sensor placement 或 搜索:

LASER:面向连续场重建的学习型主动感知方法 / LASER: Learning Active Sensing for Continuum Field Reconstruction


1️⃣ 一句话总结

本文提出了一种名为LASER的闭环主动感知框架,通过将传感器移动决策建模为部分可观测马尔可夫决策过程,并利用隐空间世界模型预测物理场动态,使得传感器能自主移动到信息最丰富的区域,从而在传感器数量极少的情况下仍能高精度地重建连续物理场。

源自 arXiv: 2604.19355