用于模拟化学反射特征的光谱到光谱转换的一维条件生成对抗网络

Q3 Chemistry
C. Murphy, J. Kerekes
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引用次数: 0

摘要

由于缺乏能够准确预测光谱的基于物理的模型,通过主动光谱传感对痕量化学残留物进行分类具有挑战性。为了克服这一挑战,我们利用域适应领域将数据从模拟域转换到测量域以训练分类器。我们开发了第一个一维条件生成对抗网络(GAN)来执行反射特征的频谱到频谱转换。我们将一维条件GAN应用于模拟光谱库,并使用翻译后的光谱来量化分类器在真实数据上分类精度的提高。使用GAN翻译库,对真实化学反射率数据(包括未包含在GAN训练集中的化学物质数据)的平均分类准确率从0.622提高到0.723。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
1D conditional generative adversarial network for spectrum-to-spectrum translation of simulated chemical reflectance signatures
The classification of trace chemical residues through active spectroscopic sensing is challenging due to the lack of physics-based models that can accurately predict spectra. To overcome this challenge, we leveraged the field of domain adaptation to translate data from the simulated to the measured domain for training a classifier. We developed the first 1D conditional generative adversarial network (GAN) to perform spectrum-to-spectrum translation of reflectance signatures. We applied the 1D conditional GAN to a library of simulated spectra and quantified the improvement in classification accuracy on real data using the translated spectra for training the classifier. Using the GAN-translated library, the average classification accuracy increased from 0.622 to 0.723 on real chemical reflectance data, including data from chemicals not included in the GAN training set.
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来源期刊
Journal of Spectral Imaging
Journal of Spectral Imaging Chemistry-Analytical Chemistry
CiteScore
3.90
自引率
0.00%
发文量
11
审稿时长
22 weeks
期刊介绍: JSI—Journal of Spectral Imaging is the first journal to bring together current research from the diverse research areas of spectral, hyperspectral and chemical imaging as well as related areas such as remote sensing, chemometrics, data mining and data handling for spectral image data. We believe all those working in Spectral Imaging can benefit from the knowledge of others even in widely different fields. We welcome original research papers, letters, review articles, tutorial papers, short communications and technical notes.
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