Deep‐learning based on‐chip rapid spectral imaging with high spatial resolution

Chip Pub Date : 2023-06-01 DOI:10.1016/j.chip.2023.100045
Jiawei Yang , Kaiyu Cui , Yidong Huang , Wei Zhang , Xue Feng , Fang Liu
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引用次数: 2

Abstract

Spectral imaging extends the concept of traditional color cameras to capture images across multiple spectral channels and has broad application prospects. Conventional spectral cameras based on scanning methods suffer from the drawbacks of low acquisition speed and large volume. On-chip computational spectral imaging based on metasurface filters provides a promising scheme for portable applications, but endures long computation time due to point-by-point iterative spectral reconstruction and mosaic effect in the reconstructed spectral images. In this study, on-chip rapid spectral imaging was demonstrated, which eliminated the mosaic effect in the spectral image by deep-learning-based spectral data cube reconstruction. The experimental results show that 4 orders of magnitude faster than the iterative spectral reconstruction were achieved, and the fidelity of the spectral reconstruction for the standard color plate was over 99% for a standard color board. In particular, video-rate spectral imaging was demonstrated for moving objects and outdoor driving scenes with good performance for recognizing metamerism, where the concolorous sky and white cars can be distinguished via their spectra, showing great potential for autonomous driving and other practical applications in the field of intelligent perception.

基于深度学习的高空间分辨率芯片快速光谱成像
光谱成像将传统彩色相机的概念扩展到跨多个光谱通道拍摄图像,具有广阔的应用前景。传统的基于扫描方法的光谱相机存在采集速度低和体积大的缺点。基于元表面滤波器的片上计算光谱成像为便携式应用提供了一种很有前途的方案,但由于逐点迭代光谱重建和重建光谱图像中的马赛克效应,其计算时间很长。在本研究中,演示了片上快速光谱成像,通过基于深度学习的光谱数据立方体重建消除了光谱图像中的马赛克效应。实验结果表明,该方法比迭代光谱重建快4个数量级,标准色板的光谱重建保真度超过99%。特别是,视频速率光谱成像被证明适用于运动物体和户外驾驶场景,具有良好的同色异谱识别性能,可以通过光谱区分同色天空和白色汽车,在智能感知领域的自动驾驶和其他实际应用中显示出巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.80
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0.00%
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