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Random two-frame interferometry based on deep learning

Ziqiang Li, Xinyang Li, Rongguang Liang

2020Optics Express27 citationsDOIOpen Access PDF

Abstract

A two-frame phase-shifting interferometric wavefront reconstruction method based on deep learning is proposed. By learning from a large number of simulation data based on a physical model, the wrapped phase can be calculated accurately from two interferograms with an unknown phase step. The phase step can be any value excluding the integral multiples of π and the size of interferograms can be flexible. This method does not need a pre-filtering to subtract the direct-current term, but only needs a simple normalization. Comparing with other two-frame methods in both simulations and experiments, the proposed method can achieve better performance.

Topics & Concepts

WavefrontInterferometryNormalization (sociology)Computer scienceOpticsFrame (networking)Phase (matter)Phase unwrappingAlgorithmPhysicsQuantum mechanicsTelecommunicationsSociologyAnthropologyOptical measurement and interference techniquesDigital Holography and MicroscopyAdvanced Optical Sensing Technologies
Random two-frame interferometry based on deep learning | Litcius