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Unifying temporal phase unwrapping framework using deep learning

Xinming Guo, Yixuan Li, Jiaming Qian, Yuxuan Che, Chao Zuo, Qian Chen, Edmund Y. Lam, Huai Wang, Shijie Feng

2023Optics Express38 citationsDOIOpen Access PDF

Abstract

Temporal phase unwrapping (TPU) is significant for recovering an unambiguous phase of discontinuous surfaces or spatially isolated objects in fringe projection profilometry. Generally, temporal phase unwrapping algorithms can be classified into three groups: the multi-frequency (hierarchical) approach, the multi-wavelength (heterodyne) approach, and the number-theoretic approach. For all of them, extra fringe patterns of different spatial frequencies are required for retrieving the absolute phase. Due to the influence of image noise, people have to use many auxiliary patterns for high-accuracy phase unwrapping. Consequently, image noise limits the efficiency and the measurement speed greatly. Further, these three groups of TPU algorithms have their own theories and are usually applied in different ways. In this work, for the first time to our knowledge, we show that a generalized framework using deep learning can be developed to perform the TPU task for different groups of TPU algorithms. Experimental results show that benefiting from the assistance of deep learning the proposed framework can mitigate the impact of noise effectively and enhance the phase unwrapping reliability significantly without increasing the number of auxiliary patterns for different TPU approaches. We believe that the proposed method demonstrates great potential for developing powerful and reliable phase retrieval techniques.

Topics & Concepts

Computer sciencePhase retrievalNoise (video)Phase (matter)Absolute phaseArtificial intelligencePhase unwrappingDeep learningStructured-light 3D scannerPhase noiseAlgorithmOpticsImage (mathematics)Pattern recognition (psychology)InterferometryMathematicsFourier transformPhysicsScannerMathematical analysisQuantum mechanicsOptical measurement and interference techniques3D Surveying and Cultural HeritageAdvanced X-ray Imaging Techniques
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