A Novel and Fast Approach for Reconstructing CASSI-Raman Spectra using Generative Adversarial Networks

Jacob Eek, David Gustafsson, Ludwig Hollmann, M. Nordberg, I. Skog, Magnus Malmström
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Abstract

Raman spectroscopy in conjunction with a Coded Aperture Snapshot Spectral Imaging (CASSI) system allows for detection of small amounts of explosives from stand-off distances. The obtained Compressed Sensing (CS) measurements from CASSI consists of mixed spatial and spectral information, from which a HyperSpectral Image (HSI) can be reconstructed. The HSI contains Raman spectra for all spatial locations in the scene, revealing the existence of substances. In this paper we present the possibility of utilizing a learned prior in the form of a conditional generative model for HSI reconstruction using CS. A Generative Adversarial Network (GAN) is trained using simulated samples of HSI, and conditioning on their respective CASSI measurements to refine the prior. Two different types of simulated HSI were investigated, where spatial overlap of substances was either allowed or disallowed. The results show that the developed method produces precise reconstructions of HSI from their CASSI measurements in a matter of seconds.
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一种基于生成对抗网络的CASSI-Raman光谱重构新方法
拉曼光谱与编码孔径快照光谱成像(CASSI)系统相结合,可以从隔离距离检测少量爆炸物。CASSI压缩感知(CS)测量结果由混合的空间和光谱信息组成,可以重建高光谱图像(HSI)。HSI包含场景中所有空间位置的拉曼光谱,揭示物质的存在。在本文中,我们提出了利用条件生成模型形式的学习先验的可能性,用于使用CS进行HSI重建。生成对抗网络(GAN)使用HSI的模拟样本进行训练,并对其各自的CASSI测量进行调节以改进先验。研究了两种不同类型的模拟HSI,其中允许或不允许物质的空间重叠。结果表明,开发的方法可以在几秒钟内从他们的CASSI测量结果中产生精确的HSI重建。
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