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Deep Learning for Single-Shot Structured Light Profilometry: A Comprehensive Dataset and Performance Analysis. | LitMetric

Deep Learning for Single-Shot Structured Light Profilometry: A Comprehensive Dataset and Performance Analysis.

J Imaging

Industrial Vision Lab (InViLab), Faculty of Applied Engineering, Campus Groenenborger, University of Antwerp, Groenenborgerlaan 179, 2020 Antwerp, Belgium.

Published: July 2024

AI Article Synopsis

  • Single-shot deep learning-based structured light profilometry (SS-DL-SLP) offers fast and reliable 3D measurement, but creating large training datasets for it is a challenge due to practical constraints.
  • The paper introduces a dataset with over 10,000 examples created by 3D-printing a calibration target and recording both height profiles and fringe patterns.
  • The researchers analyzed various neural networks for accuracy and robustness, and they made their dataset and code publicly available to encourage further research and development in DL-based techniques for SS-DL-SLP.

Article Abstract

In 3D optical metrology, single-shot deep learning-based structured light profilometry (SS-DL-SLP) has gained attention because of its measurement speed, simplicity of optical setup, and robustness to noise and motion artefacts. However, gathering a sufficiently large training dataset for these techniques remains challenging because of practical limitations. This paper presents a comprehensive DL-SLP dataset of over 10,000 physical data couples. The dataset was constructed by 3D-printing a calibration target featuring randomly varying surface profiles and storing the height profiles and the corresponding deformed fringe patterns. Our dataset aims to serve as a benchmark for evaluating and comparing different models and network architectures in DL-SLP. We performed an analysis of several established neural networks, demonstrating high accuracy in obtaining full-field height information from previously unseen fringe patterns. In addition, the network was validated on unique objects to test the overall robustness of the trained model. To facilitate further research and promote reproducibility, all code and the dataset are made publicly available. This dataset will enable researchers to explore, develop, and benchmark novel DL-based approaches for SS-DL-SLP.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11355059PMC
http://dx.doi.org/10.3390/jimaging10080179DOI Listing

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