Spectral Reconstruction From Dispersive Blur: A Novel Light Efficient Spectral Imager

Yuanyuan Zhao, Xue-mei Hu, Hui Guo, Zhan Ma, Tao Yue, Xun Cao
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引用次数: 3

Abstract

Developing high light efficiency imaging techniques to retrieve high dimensional optical signal is a long-term goal in computational photography. Multispectral imaging, which captures images of different wavelengths and boosting the abilities for revealing scene properties, has developed rapidly in the last few decades. From scanning method to snapshot imaging, the limit of light collection efficiency is kept being pushed which enables wider applications especially under the light-starved scenes. In this work, we propose a novel multispectral imaging technique, that could capture the multispectral images with a high light efficiency. Through investigating the dispersive blur caused by spectral dispersers and introducing the difference of blur (DoB) constraints, we propose a basic theory for capturing multispectral information from a single dispersive-blurred image and an additional spectrum of an arbitrary point in the scene. Based on the theory, we design a prototype system and develop an optimization algorithm to realize snapshot multispectral imaging. The effectiveness of the proposed method is verified on both the synthetic data and real captured images.
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色散模糊光谱重建:一种新型光效光谱成像仪
开发高光效成像技术来检索高维光信号是计算摄影的长期目标。在过去的几十年里,多光谱成像技术得到了迅速发展,它可以捕捉不同波长的图像,提高揭示场景特性的能力。从扫描方法到快照成像,不断突破光收集效率的极限,使其在光缺乏场景下的应用更加广泛。在这项工作中,我们提出了一种新的多光谱成像技术,可以以高光效捕获多光谱图像。通过研究光谱分散剂引起的色散模糊,并引入模糊约束的差异,提出了从单幅色散模糊图像和场景中任意点的附加光谱中捕获多光谱信息的基本理论。在此基础上,我们设计了一个原型系统,并开发了一种优化算法来实现快照多光谱成像。在合成数据和实际捕获图像上验证了该方法的有效性。
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