Bayesian PINNs for uncertainty-aware inverse problems (BPINN-IP)
AI 摘要
提出了一种基于贝叶斯PINN的线性逆问题求解方法,可量化不确定性。
主要贡献
- 提出了BPINN-IP方法
- 利用变分推理和蒙特卡洛dropout进行预测
- 应用于反卷积和超分辨率问题
方法论
采用分层贝叶斯方法构建PINN,结合变分推理和蒙特卡洛dropout,提供预测均值和方差。
原文摘要
The main contribution of this paper is to develop a hierarchical Bayesian formulation of PINNs for linear inverse problems, which is called BPINN-IP. The proposed methodology extends PINN to account for prior knowledge on the nature of the expected NN output, as well as its weights. Also, as we can have access to the posterior probability distributions, naturally uncertainties can be quantified. Also, variational inference and Monte Carlo dropout are employed to provide predictive means and variances for reconstructed images. Un example of applications to deconvolution and super-resolution is considered, details of the different steps of implementations are given, and some preliminary results are presented.