Automatic classification of true and false laser-induced damage in large aperture optics

  • Wei F
  • Chen F
  • Liu B
  • et al.
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Abstract

© The Authors. Published by SPIE under a Creative Commons Attribution 3.0. An automatic classification method based on machine learning is proposed to distinguish between true and false laser-induced damage in large aperture optics. First, far-field light intensity distributions are calculated via numerical calculations based on both the finite-difference time-domain and the Fourier optical angle spectrum theory for Maxwell's equations. The feature vectors are presented to describe the possible damage sites, which include true and false damage sites. Finally, a kernel-based extreme learning machine is used for automatic recognition of the true sites and false sites. The method studied in this paper achieves good recognition of false damage, which includes a variety of types, especially attachment-type false damage, which has rarely been studied before.

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APA

Wei, F., Chen, F., Liu, B., Peng, Z., Tang, J., Zhu, Q., … Liu, G. (2018). Automatic classification of true and false laser-induced damage in large aperture optics. Optical Engineering, 57(05), 1. https://doi.org/10.1117/1.oe.57.5.053112

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