Paper
7 October 2020 Temporal phase unwrapping with a lightweight deep neural network
Author Affiliations +
Proceedings Volume 11571, Optics Frontier Online 2020: Optics Imaging and Display; 115710N (2020) https://doi.org/10.1117/12.2580149
Event: Optics Frontiers Online 2020: Optics Imaging and Display (OFO-1), 2020, Shanghai, China
Abstract
Absolute phase unwrapping is important for optical phase-based three-dimensional (3D) measurements of isolated objects or discontinuous surfaces. For fringe projection profilometry, the fringe order of each stripe can be obtained uniquely by temporal phase unwrapping (TPU) that employs at least two different phase maps of the same measured scene. In this work, we present a novel TPU strategy using deep learning. Our idea is to treat the calculation of fringe order as a classification problem, which can be solved by a lightweight fully connected neural network. Consequently, the training process of our network can be finished within an hour, which saves a large amount of time and makes it possible to deploy the network on mobile devices. Moreover, rather than obtaining the training data from time-consuming real experiments, we simulate the data with software under different noises.
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Kai Liu and Yuzhen Zhang "Temporal phase unwrapping with a lightweight deep neural network", Proc. SPIE 11571, Optics Frontier Online 2020: Optics Imaging and Display, 115710N (7 October 2020); https://doi.org/10.1117/12.2580149
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KEYWORDS
Fringe analysis

Neural networks

Phase shifts

Cameras

3D modeling

Convolutional neural networks

Data modeling

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