Photonics (Feb 2024)

A Deep Learning-Based Preprocessing Method for Single Interferometric Fringe Patterns

  • Xueliang Zhu,
  • Di Zhang,
  • Yilei Hao,
  • Bingcai Liu,
  • Hongjun Wang,
  • Ailing Tian

DOI
https://doi.org/10.3390/photonics11030226
Journal volume & issue
Vol. 11, no. 3
p. 226

Abstract

Read online

A novel preprocessing method based on a modified U-NET is proposed for single interference fringes. The framework is constructed by introducing spatial attention and channel attention modules to optimize performance. In this process, interferometric fringe maps with an added background intensity, fringe amplitude, and ambient noise are used as the input to the network, which outputs fringe maps in an ideal state. Simulated and experimental results demonstrated that this technique can preprocess single interference fringes in ~1 microsecond. The quality of the results was further evaluated using the root mean square error, peak signal-to-noise ratio, structural similarity, and equivalent number of views. The proposed method outperformed U-NET, U-NET++, and other conventional algorithms as measured by each of these metrics. In addition, the model produced high-quality normalized fringes by combining objective data with visual effects, significantly improving the accuracy of the phase solutions for single interference fringes.

Keywords