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High-accuracy phase demodulation method compatible to closed fringes in a single-frame interferogram based on deep learning

Shizhu Yuan, Yao Hu, Qun Hao, Shaohui Zhang

2021Optics Express47 citationsDOIOpen Access PDF

Abstract

Interferogram demodulation is a fundamental problem in optical interferometry. It is still challenging to obtain high-accuracy phases from a single-frame interferogram that contains closed fringes. In this paper, we propose a neural network architecture for single-frame interferogram demodulation. Furthermore, instead of using real experimental data, an interferogram generation model is constructed to generate the dataset for the network's training. A four-stage training strategy adopting appropriate optimizers and loss functions is developed to guarantee the high-accuracy training of the network. The experimental results indicate that the proposed method can achieve a phase demodulation accuracy of 0.01 λ (root mean square error) for actual interferograms containing closed fringes.

Topics & Concepts

DemodulationComputer scienceFrame (networking)InterferometryPhase (matter)OpticsPhase retrievalArtificial intelligenceRoot mean squareArtificial neural networkFourier transformMathematicsPhysicsTelecommunicationsChannel (broadcasting)Mathematical analysisQuantum mechanicsOptical measurement and interference techniquesImage Processing Techniques and ApplicationsOptical Systems and Laser Technology