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Single-shot absolute 3D shape measurement with deep-learning-based color fringe projection profilometry
221
Citations
19
References
2020
Year
Geometric Modeling3D Computer VisionSingle-shot Absolute 3DMachine VisionPhase RetrievalImage AnalysisEngineering3D VisionCoherent Gradient SensingNeural NetworkShape MeasurementComputational ImagingDepth Map3D ReconstructionDeep Learning3D Object RecognitionComputer VisionSingle Frame Image
Recovering the high-resolution three-dimensional (3D) surface of an object from a single frame image has been the ultimate goal long pursued in fringe projection profilometry (FPP). The color fringe projection method is one of the technologies with the most potential towards such a goal due to its three-channel multiplexing properties. However, the associated color imbalance, crosstalk problems, and compromised coding strategy remain major obstacles to overcome. Inspired by recent successes of deep learning for FPP, we propose a single-shot absolute 3D shape measurement with deep-learning-based color FPP. Through "learning" on extensive data sets, the properly trained neural network can "predict" the high-resolution, motion-artifact-free, crosstalk-free absolute phase directly from one single color fringe image. Compared with the traditional approach, our method allows for more accurate phase retrieval and more robust phase unwrapping. Experimental results demonstrate that the proposed approach can provide high-accuracy single-frame absolute 3D shape measurement for complicated objects.
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