Shijie
Xiong
and
Xianguang
Yang
*
Guangdong Provincial Key Laboratory of Nanophotonic Manipulation, Institute of Nanophotonics, College of Physics & Optoelectronic Engineering, Jinan University, Guangzhou 511443, China. E-mail: xianguang@jnu.edu.cn
First published on 21st March 2024
Nano-color routing has emerged as an immensely popular and widely discussed subject in the realms of light field manipulation, image sensing, and the integration of deep learning. The conventional dye filters employed in commercial applications have long been hampered by several limitations, including subpar signal-to-noise ratio, restricted upper bounds on optical efficiency, and challenges associated with miniaturization. Nonetheless, the advent of bandpass-free color routing has opened up unprecedented avenues for achieving remarkable optical spectral efficiency and operation at sub-wavelength scales within the area of image sensing applications. This has brought about a paradigm shift, fundamentally transforming the field by offering a promising solution to surmount the constraints encountered with traditional dye filters. This review presents a comprehensive exploration of representative deep learning-driven nano-color routing structure designs, encompassing forward simulation algorithms, photonic neural networks, and various global and local topology optimization methods. A thorough comparison is drawn between the exceptional light-splitting capabilities exhibited by these methods and those of traditional design approaches. Additionally, the existing research on color routing is summarized, highlighting a promising direction for forthcoming development, delivering valuable insights to advance the field of color routing and serving as a powerful reference for future endeavors.
Fig. 1 Different image sensor filtering strategies and color routing mechanisms. (a) V-shaped all-dielectric antenna wavelength router. Reproduced with permission.29 Copyright © 2016 American Chemical Society. (b) Sub-micrometer nanostructure-based RGB filters for CMOS image sensors. Reproduced with permission.30 Copyright © 2019 American Chemical Society. (c) R-G1-B-G2 full-color routing with multiplex GaN metalens.31 (d) Schematic of a conventional CMOS image sensor and metalens-based color router. Reproduced with permission.31 Copyright © 2017 American Chemical Society. |
Fig. 2 Color routing mechanisms in different implementation forms. (a) A new type of splitter composed of irregular structures.42 (b) Top view of the color-coded layers for an irregular-layer topology-optimized splitter structure. Reproduced with permission.42 Copyright © 2021 Elsevier. (c) Spectrum splitter consisting of TiO2 bars and SiO2 substrates. Reproduced with permission.43 Copyright © 2019 IEEE. (d) Multilayer-designed spectral router fabricated by lithography and material deposition. Reproduced with permission.44 Copyright © 2020 The Optical Society. (e) Schematic of an image sensor with a full-color-sorting metalens array. Reproduced with permission.45 Copyright © 2021 Optica Publishing Group. (f) Pixel-level Bayer-type color router based on metasurfaces. Reproduced with permission.46 Copyright © 2022 Springer Nature. |
Fig. 3 Relevant achievements and progress of various deep learning technologies in the field of optics. (a) Diffractive optical network-based multispectral imaging system. Reproduced with permission.58 Copyright © 2023 Springer Nature. (b) A method using artificial neural networks to approximate light scattering by multilayer nanoparticles. Reproduced with permission.59 Copyright © 2018 AAAS. (c) CNN-based model aiming at modeling meta-atoms with high degrees of freedom. Reproduced with permission.60 Copyright © 2020 The Optical Society. (d and e) Deep neural network-enabled plasmonic nanostructure design. Reproduced with permission.61 Copyright © 2018 Springer Nature. (f) Deep learning optical spectroscopy applied in molecular design. Reproduced with permission.62 Copyright © 2021 American Chemical Society. (g) The deep learning method used in increasing optical information storage. Reproduced with permission.63 Copyright © 2019 Springer Nature. |
Fig. 4 Optical splitting routing design under different optimization strategy designs. (a) Bayer-array color routing optimized using the genetic algorithm. Reproduced with permission.40 Copyright © 2022 Springer Nature. (b) A single-layer QR-code-like nano-color router enhanced using the NSGA-II algorithm.72 (c) Ultracompact color splitter driven by an inverse design genetic algorithm. Reproduced with permission.73 Copyright © 2022 American Chemical Society. (d) RGB-IR router optimized by gradient-based optimization combined with an FDTD solution. Reproduced with permission.74 Copyright © 2021 John Wiley and Sons. (e) The deep neural network for far-field recognition of subwavelength image sensor optimization. Reproduced with permission.75 Copyright © 2020 American Physical Society. (f) The correlator convolutional neural network architecture used in image reconstruction optimization. Reproduced with permission.76 Copyright © 2021 Springer Nature. |
Fig. 5 Application of inverse design methods in the field of photonics. (a) Deep neural network inverse design of the integrated photonic power splitter. Reproduced with permission.88 Copyright © 2019 Springer Nature. (b) Inverse design of the Fabry-Perot cavity-based color filter using the bidirectional artificial neural network. Reproduced with permission.89 Copyright © 2021 Optica Publishing Group. (c) Global inverse design across multiple photonic structure classes using generative deep learning. Reproduced with permission.90 Copyright © 2021 John Wiley and Sons. |
This journal is © The Royal Society of Chemistry 2024 |