Inverse problems arise across scientific and engineering domains, where the goal is to infer hidden parameters or physical fields from indirect and noisy observations. Classical approaches, such as variational regularization and Bayesian inference, provide well established theoretical foundations for handling ill posedness. However, these methods often become computationally restrictive in high dimensional settings or when the forward model is governed by complex physics. Physics Informed Neural Networks (PINNs) have recently emerged as a promising framework for solving inverse problems by embedding physical laws directly into the training process of neural networks. In this paper, we introduce a new perspective on the Bayesian Physics Informed Neural Network (BPINN) framework, extending classical PINNs by explicitly incorporating training data generation, modeling and measurement uncertainties through Bayesian prior modeling and doing inference with the posterior laws. Also, as we focus on the inverse problems, we call this method BPINN-IP, and we show that the standard PINN formulation naturally appears as its special case corresponding to the Maximum A Posteriori (MAP) estimate. This unified formulation allows simultaneous exploitation of physical constraints, prior knowledge, and data-driven inference, while enabling uncertainty quantification through posterior distributions. To demonstrate the effectiveness of the proposed framework, we consider inverse problems arising in infrared image processing, including deconvolution and super-resolution, and present results on both simulated and real industrial data.
翻译:逆问题广泛存在于科学与工程领域,其目标是从间接且含噪声的观测中推断隐藏参数或物理场。经典方法(如变分正则化和贝叶斯推断)为处理不适定性提供了成熟的理论基础。然而,这些方法在高维场景或前向模型受复杂物理规律支配时,往往面临计算上的限制。物理信息神经网络(PINNs)近年来成为一种有前景的解决逆问题的框架,通过将物理定律直接嵌入神经网络的训练过程。本文提出贝叶斯物理信息神经网络(BPINN)框架的新视角,通过贝叶斯先验建模显式纳入训练数据生成、建模与测量不确定性,并利用后验分布进行推断,从而扩展了经典PINNs。由于聚焦于逆问题,我们将该方法称为BPINN-IP,并证明标准PINN公式自然成为其对应于最大后验(MAP)估计的特例。这一统一框架能够同时利用物理约束、先验知识与数据驱动的推断,并通过后验分布实现不确定性量化。为验证所提框架的有效性,我们以红外图像处理中的逆问题(包括去卷积和超分辨率)为例,在模拟和真实工业数据上展示了实验结果。