Transforming Hyperspectral Images Into Chemical Maps: A Novel End-to-End Deep Learning Approach

IF 2.3 4区 化学 Q1 SOCIAL WORK
Ole-Christian Galbo Engstrøm, Michela Albano-Gaglio, Erik Schou Dreier, Yamine Bouzembrak, Maria Font-i-Furnols, Puneet Mishra, Kim Steenstrup Pedersen
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Abstract

Current approaches to chemical map generation from hyperspectral images are based on models such as partial least squares (PLS) regression, generating pixel-wise predictions that do not consider spatial context and suffer from a high degree of noise. This study proposes an end-to-end deep learning approach using a modified version of U-Net and a custom loss function to directly obtain chemical maps from hyperspectral images, skipping all intermediate steps required for traditional pixel-wise analysis. The U-Net is compared with the traditional PLS regression on a real dataset of pork belly samples with associated mean fat reference values. The U-Net obtains a test set root mean squared error of between 9% and 13% lower than that of PLS regression on the task of mean fat prediction. At the same time, U-Net generates fine detail chemical maps where 99.91% of the variance is spatially correlated. Conversely, only 2.53% of the variance in the PLS-generated chemical maps is spatially correlated, indicating that each pixel-wise prediction is largely independent of neighboring pixels. Additionally, while the PLS-generated chemical maps contain predictions far beyond the physically possible range of 0%–100%, U-Net learns to stay inside this range. Thus, the findings of this study indicate that U-Net is superior to PLS for chemical map generation.

Abstract Image

将高光谱图像转换为化学图:一种新颖的端到端深度学习方法
目前从高光谱图像生成化学图的方法是基于偏最小二乘(PLS)回归等模型,生成逐像素的预测,不考虑空间背景,并且受到高度噪声的影响。本研究提出了一种端到端深度学习方法,使用修改版本的U-Net和自定义损失函数直接从高光谱图像中获取化学图谱,跳过传统逐像素分析所需的所有中间步骤。U-Net在具有相关平均脂肪参考值的五花肉样本的真实数据集上与传统PLS回归进行了比较。在平均脂肪预测任务上,U-Net得到的测试集均方根误差比PLS回归低9%至13%。同时,U-Net生成精细的化学图谱,其中99.91%的方差是空间相关的。相反,在pls生成的化学图谱中,只有2.53%的方差是空间相关的,这表明每个逐像素预测在很大程度上与相邻像素无关。此外,虽然pls生成的化学图谱所包含的预测远远超出了0%-100%的物理可能范围,但U-Net学会了保持在这个范围内。因此,本研究结果表明,U-Net在化学图谱生成方面优于PLS。
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来源期刊
Journal of Chemometrics
Journal of Chemometrics 化学-分析化学
CiteScore
5.20
自引率
8.30%
发文量
78
审稿时长
2 months
期刊介绍: The Journal of Chemometrics is devoted to the rapid publication of original scientific papers, reviews and short communications on fundamental and applied aspects of chemometrics. It also provides a forum for the exchange of information on meetings and other news relevant to the growing community of scientists who are interested in chemometrics and its applications. Short, critical review papers are a particularly important feature of the journal, in view of the multidisciplinary readership at which it is aimed.
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