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首页> 外文期刊>Journal of near infrared spectroscopy >Segregating wood wastes by repetitive principal component analysis of near infrared spectra
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Segregating wood wastes by repetitive principal component analysis of near infrared spectra

机译:通过近红外光谱的重复主成分分析来隔离木屑

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摘要

To improve the recycling rate of wooden materials, it is necessary to classify wood waste by disposal method and usage. In the industrial manufacture of these materials, rapid and accurate determination of their chemical and physical properties is critical for a stable supply of wood products with reliable quality. In this study, we investigated a discriminant analysis process for waste wood products using hyperspectral imaging with a newly developed repetitive principal component analysis. Hyperspectral images of four types of wood waste (plywood coated with resin, preservative-treated wood, hardwood and softwood) were acquired. The mean spectrum of each sample was extracted from a hypercube in order to build a classification model. A novel classification method based on principal component analysis, named repetitive principal component analysis, was developed. A total of three repetitions of principal component analysis were performed to classify the four types of wood waste. Cross-validated results of repetitive principal component analysis resulted in classifications greater than 85% for any of the four wood waste types. The discriminant model was then applied to single-pixel spectra of the hypercube to form a prediction map. Hyperspectral imaging, with the aid of the new repetitive principal component analysis discriminant analysis, is a powerful tool in wood recycling processes.
机译:为了提高木材的回收率,有必要通过处理方法和用途来分类木材废物。在这些材料的工业制造中,快速准确地确定其化学和物理性质对于具有可靠质量的木制品稳定供应至关重要。在这项研究中,我们研究了使用高光谱成像的废木制品具有新开发的重复主成分分析的判别分析过程。获得了四种木材废物的高光谱图像(涂有树脂,防腐剂处理的木材,硬木和软木)。从HyperCube中提取每个样品的平均光谱,以便构建分类模型。开发了一种基于主成分分析的新型分类方法,命名重复主成分分析。进行三次重复的主要成分分析以进行分类四种类型的木材废料。交叉验证的重复主成分分析结果导致四种木材废物类型中的任何分类大于85%。然后将判别模型应用于HyperCube的单像素光谱以形成预测图。借助于新的重复主成分分析判别分析,高光谱成像是木材回收过程中的强大工具。

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