光学学报, 2023, 43 (16): 1623004, 网络出版: 2023-08-01   

基于超表面的实时超光谱成像芯片 下载: 1438次特邀综述内封底文章

Real-Time Ultraspectral Imaging Chip Based on Metasurfaces
杨家伟 1,2崔开宇 1,2,*熊健 1,2饶世杰 1,2冯雪 1,2刘仿 1,2张巍 1,2,3黄翊东 1,2,3,**
作者单位
1 清华大学电子工程系,北京 100084
2 北京国家信息科学技术研究中心,北京 100084
3 北京量子信息科学研究院,北京 100084
摘要
基于空间扫描或波长扫描的传统光谱成像设备体积庞大,无法获取动态的光谱信息。利用超表面可以实现丰富的光谱调制函数,结合计算重建和空分复用方法可以实现高光谱分辨率和空间分辨率的实时光谱成像芯片。本文介绍了超表面光谱成像的基本原理,分别阐述了基于规则形状和自由形状的超表面光谱成像芯片的设计方法与性能指标,以及基于神经网络的光谱图像快速重建算法,简述了超表面光谱成像芯片在活体大鼠脑光谱成像、人脸防伪识别、自动驾驶等领域的应用,最后讨论和展望了超表面光谱成像芯片未来的发展趋势和应用前景。
Abstract
Significance

Spectrum generally refers to the electromagnetic wave spectrum in the wavelength range from ultraviolet to infrared bands, containing rich information about the interaction between matter and light waves. Spectrum is also called the "fingerprint" of matter. Spectral imaging can obtain three-dimensional data cubes containing the spectral information of each point in the two-dimensional image, which surpasses the perception ability of human eyes, and it thus has important application prospects in many fields such as disease diagnosis, precision agriculture, food safety, astronomical detection, and face recognition.

According to the methods of data acquisition, spectral imaging can be divided into four categories: point scanning type, line scanning type, wavelength scanning type, and snapshot type. Traditional spectral imaging technology generally adopts the mode of spatial scanning or wavelength scanning, which fails to obtain the real-time spectral information of each pixel in the field of vision. In recent years, new single-point spectrometers based on computational spectral reconstruction have made a breakthrough in miniaturization, but there is no report about snapshot spectral imaging based on the above scheme. There is no research scheme for snapshot spectral imaging that can achieve high spectral accuracy, high spatial resolution, and high imaging speed simultaneously.

For the spectral imaging scheme based on metasurfaces, different metasurface units with different structure parameters are designed to realize rich broadband modulation on the spectra of incident light at each spatial point. The modulated light signal is detected by the image sensor, and the spectral information of incident light is obtained by computational reconstruction. The number of metasurface units can be significantly smaller than that of wavelength channels, which effectively reduces the volume of a single microspectrometer. Spectral imaging can be realized through the periodic array of the computational spectrometer, which has the advantages of high design freedom, high integration density, and low-cost mass production.

Progress

In 2022, we reported the world's first real-time ultraspectral imaging chip based on regularly shaped metasurface units. The designed metasurface units contain five types: round hole, square hole, cross hole, and square and cross hole after 45 degrees of rotation (Fig. 4). The real-time ultraspectral imaging chip reduces the size of a single-point spectrometer to less than 100 μm and can obtain spectral information of more than 150000 spatial points in a single shot. In other words, more than 150000 (356×436) micro spectrometers are integrated on a chip with a size of 0.5 cm2, and the operational wavelength band of each microspectrometer is 450-750 nm. The measured wavelength accuracy of monochromatic light is 0.04 nm, and the spectral resolution is up to 0.8 nm. In order to break through the design restriction of regular shapes, we propose a design method of freeform-shaped metasurface units. The freeform shapes are generated by grid partitioning, random distribution of grid values, filtering, and binarization. The corresponding design freedom is expanded by 2-3 orders of magnitude compared with that of regular shapes. Thanks to the expansion of design space, the performance of ultraspectral imaging chip based on freeform-shaped metasurface units is further improved, with a wavelength resolution up to 0.5 nm (Fig. 5). In terms of spectral image reconstruction algorithm, we propose to use ADMM-net, a deep unrolled neural network based on ADMM iterative algorithm, to realize fast spectral image reconstruction. A single reconstruction only takes 18 ms, and the reconstruction speed is improved by about 5 orders of magnitude compared with the traditional point-by-point iterative spectral reconstruction algorithm. We also discuss the application prospects of metasurface spectral imaging chips in the brain imaging of living rats, face anti-counterfeiting recognition, automatic driving, and other fields

Conclusions and Prospects

We summarize the work related to metasurface spectral imaging chips from the basic principles, structural design, reconstruction algorithms, and potential applications. In the future, metasurface spectral imaging chips with the advantages of high precision, low cost, and mass production are expected to become the basis for the development of artificial intelligence and big data. Further optimization directions of metasurface spectral imaging chips include improving the spectral image reconstruction algorithm and reducing the angle sensitivity of metasurface units.

杨家伟, 崔开宇, 熊健, 饶世杰, 冯雪, 刘仿, 张巍, 黄翊东. 基于超表面的实时超光谱成像芯片[J]. 光学学报, 2023, 43(16): 1623004. Jiawei Yang, Kaiyu Cui, Jian Xiong, Shijie Rao, Xue Feng, Fang Liu, Wei Zhang, Yidong Huang. Real-Time Ultraspectral Imaging Chip Based on Metasurfaces[J]. Acta Optica Sinica, 2023, 43(16): 1623004.

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