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Physics-guided neural network for channeled spectropolarimeter spectral reconstruction

Huang, Chan; Liu, Huanwen; Wu, Su; Jiang, Xiaoyun; Zhou, Leiming; Hu, Jigang*
Science Citation Index Expanded
中国科学院

摘要

A reconstruction method incorporates the complete physical model into a traditional deep neural network (DNN) is proposed for channeled spectropolarimeter (CSP). Unlike traditional DNN-based methods that need to employ training datasets, the method starts from randomly initialized parameters which are constrained by the CSP physical model. It iterates through the gradient descent algorithm to obtain the estimation of the DNN parameters and then to obtain the mapping relationship. As a result, it eliminates the need for thousands of sets of ground truth data, while also leveraging the physical model to achieve high-precision reconstruction. As seen, the physical model participates in the optimization process of DNN parameters, thus achieving physical guidance for the DNN output results. Based on the characteristic of the network, we designate this method as the physics-guided neural network (PGNN). Both simulations and experiments demonstrate the superior performance of the proposed method. Our approach will further promote the practical application of CSP in a wider range of fields.& COPY; 2023 Optica Publishing Group under the terms of the Optica Open Access Publishing Agreement

关键词

spectrometers such as Fourier transform spectrometers computational tomography spectrometers