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Indoor Airflow Imaging Using Physics-Informed Background-Oriented Schlieren Tomography

17 September 2025
Arjun Teh
Wael H. Ali
Joshua Rapp
Hassan Mansour
    AI4CE
ArXiv (abs)PDFHTMLGithub (33470★)
Main:2 Pages
1 Figures
Bibliography:1 Pages
Abstract

We develop a framework for non-invasive volumetric indoor airflow estimation from a single viewpoint using background-oriented schlieren (BOS) measurements and physics-informed reconstruction. Our framework utilizes a light projector that projects a pattern onto a target back-wall and a camera that observes small distortions in the light pattern. While the single-view BOS tomography problem is severely ill-posed, our proposed framework addresses this using: (1) improved ray tracing, (2) a physics-based light rendering approach and loss formulation, and (3) a physics-based regularization using a physics-informed neural network (PINN) to ensure that the reconstructed airflow is consistent with the governing equations for buoyancy-driven flows.

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