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神经场热层析成像:面向无损评估的可微分物理框架

Neural Field Thermal Tomography: A Differentiable Physics Framework for Non-Destructive Evaluation

March 11, 2026
作者: Tao Zhong, Yixun Hu, Dongzhe Zheng, Aditya Sood, Christine Allen-Blanchette
cs.AI

摘要

我们提出神经场热层析成像(NeFTY),这是一种基于可微分物理的框架,能够通过瞬态表面温度测量实现材料特性的定量三维重建。传统热成像技术依赖忽略横向扩散的逐像素一维近似方法,而软约束物理信息神经网络(PINN)在瞬态扩散场景中常因梯度刚性而失效;与之不同,NeFTY将三维扩散率场参数化为连续神经场,并通过严格数值求解器进行优化。通过利用可微分物理求解器,我们的方法将热力学定律作为硬约束强制执行,同时保持高分辨率三维层析成像所需的内存效率。这种“先离散后优化”的范式有效缓解了逆热传导中固有的频谱偏差和不适定性,实现了任意尺度下亚表面缺陷的精准重构。在合成数据上的实验验证表明,NeFTY在亚表面缺陷定位精度上显著优于基线方法。更多细节请访问:https://cab-lab-princeton.github.io/nefty/
English
We propose Neural Field Thermal Tomography (NeFTY), a differentiable physics framework for the quantitative 3D reconstruction of material properties from transient surface temperature measurements. While traditional thermography relies on pixel-wise 1D approximations that neglect lateral diffusion, and soft-constrained Physics-Informed Neural Networks (PINNs) often fail in transient diffusion scenarios due to gradient stiffness, NeFTY parameterizes the 3D diffusivity field as a continuous neural field optimized through a rigorous numerical solver. By leveraging a differentiable physics solver, our approach enforces thermodynamic laws as hard constraints while maintaining the memory efficiency required for high-resolution 3D tomography. Our discretize-then-optimize paradigm effectively mitigates the spectral bias and ill-posedness inherent in inverse heat conduction, enabling the recovery of subsurface defects at arbitrary scales. Experimental validation on synthetic data demonstrates that NeFTY significantly improves the accuracy of subsurface defect localization over baselines. Additional details at https://cab-lab-princeton.github.io/nefty/
PDF22March 15, 2026