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Conditional Machine Learning-Based Inverse Design Across Multiple Classes of Nanophotonic Structures

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Abstract

We present a machine learning-based photonics design strategy centered on encoding image colors with material and structural data. Given input target spectra, our model can accurately determine the optimal metasurface class, materials, and structure.

© 2021 The Author(s)

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