氙气和氘光源紫外高光谱成像:结合主成分分析和神经网络分析不同原棉类型。

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Mohammad Al Ktash, Mona Knoblich, Max Eberle, Frank Wackenhut, Marc Brecht
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引用次数: 0

摘要

作为纺织工业的关键原料,紫外高光谱成像技术在原棉的分类和质量评价方面具有重要的应用前景。本研究评估了使用两种不同光源:氙弧(XBO)和氘灯的紫外高光谱成像(225-408 nm)与近红外高光谱成像的效果。目的是确定哪种光源能在紫外高光谱成像中更好地区分棉花类型,因为每种光源与材料的相互作用不同,可能会影响成像质量和分类准确性。采用主成分分析(PCA)和二次判别分析(QDA)对不同棉花品种和大麻植株进行了区分。XBO光照的主成分分析表明,前3个主成分(PCs)占总方差的94.8%:PC1(78.4%)和PC2(11.6%)将样品聚类为4个主要组——大麻(HP)、再生棉(RcC)和有机棉(OC),而PC3(6%)进一步将RcC分离出来。当使用氘光源时,前三个pc解释了89.4%的方差,有效地区分了HP、RcC和OC等样品类型,其中PC3清晰地区分了RcC。将PCA评分与QDA相结合,XBO光源的分类准确率达到76.1%,氘光源的分类准确率达到85.1%。此外,还应用了一种称为全连接神经网络的深度学习技术进行分类。XBO光源和氘光源的分类精度分别达到83.6%和90.1%。结果突出了该方法区分常规棉和有机棉以及大麻的能力,并识别出不同类型的再生棉,表明不同的回收过程和可能与原棉的共同来源。这些发现强调了UV高光谱成像与化学计量模型相结合的潜力,作为提高纺织行业棉花分类准确性的有力工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
UV Hyperspectral Imaging with Xenon and Deuterium Light Sources: Integrating PCA and Neural Networks for Analysis of Different Raw Cotton Types.

Ultraviolet (UV) hyperspectral imaging shows significant promise for the classification and quality assessment of raw cotton, a key material in the textile industry. This study evaluates the efficacy of UV hyperspectral imaging (225-408 nm) using two different light sources: xenon arc (XBO) and deuterium lamps, in comparison to NIR hyperspectral imaging. The aim is to determine which light source provides better differentiation between cotton types in UV hyperspectral imaging, as each interacts differently with the materials, potentially affecting imaging quality and classification accuracy. Principal component analysis (PCA) and Quadratic Discriminant Analysis (QDA) were employed to differentiate between various cotton types and hemp plant. PCA for the XBO illumination revealed that the first three principal components (PCs) accounted for 94.8% of the total variance: PC1 (78.4%) and PC2 (11.6%) clustered the samples into four main groups-hemp (HP), recycled cotton (RcC), and organic cotton (OC) from the other cotton samples-while PC3 (6%) further separated RcC. When using the deuterium light source, the first three PCs explained 89.4% of the variance, effectively distinguishing sample types such as HP, RcC, and OC from the remaining samples, with PC3 clearly separating RcC. When combining the PCA scores with QDA, the classification accuracy reached 76.1% for the XBO light source and 85.1% for the deuterium light source. Furthermore, a deep learning technique called a fully connected neural network for classification was applied. The classification accuracy for the XBO and deuterium light sources reached 83.6% and 90.1%, respectively. The results highlight the ability of this method to differentiate conventional and organic cotton, as well as hemp, and to identify distinct types of recycled cotton, suggesting varying recycling processes and possible common origins with raw cotton. These findings underscore the potential of UV hyperspectral imaging, coupled with chemometric models, as a powerful tool for enhancing cotton classification accuracy in the textile industry.

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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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