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Metasurface-empowered snapshot hyperspectral imaging with convex/deep (CODE) small-data learning theory

Chia-Hsiang Lin (), Shih-Hsiu Huang, Ting-Hsuan Lin and Pin Chieh Wu ()
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Chia-Hsiang Lin: National Cheng Kung University
Shih-Hsiu Huang: National Cheng Kung University
Ting-Hsuan Lin: National Cheng Kung University
Pin Chieh Wu: National Cheng Kung University

Nature Communications, 2023, vol. 14, issue 1, 1-10

Abstract: Abstract Hyperspectral imaging is vital for material identification but traditional systems are bulky, hindering the development of compact systems. While previous metasurfaces address volume issues, the requirements of complicated fabrication processes and significant footprint still limit their applications. This work reports a compact snapshot hyperspectral imager by incorporating the meta-optics with a small-data convex/deep (CODE) deep learning theory. Our snapshot hyperspectral imager comprises only one single multi-wavelength metasurface chip working in the visible window (500-650 nm), significantly reducing the device area. To demonstrate the high performance of our hyperspectral imager, a 4-band multispectral imaging dataset is used as the input. Through the CODE-driven imaging system, it efficiently generates an 18-band hyperspectral data cube with high fidelity using only 18 training data points. We expect the elegant integration of multi-resonant metasurfaces with small-data learning theory will enable low-profile advanced instruments for fundamental science studies and real-world applications.

Date: 2023
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DOI: 10.1038/s41467-023-42381-5

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