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首页> 外文期刊>Holzforschung >Demonstration of the applicability of visible and near-infrared spatially resolved spectroscopy for rapid and nondestructive wood classification
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Demonstration of the applicability of visible and near-infrared spatially resolved spectroscopy for rapid and nondestructive wood classification

机译:用于快速和非破坏性木材分类的可见和近红外空间分辨光谱的适用性的示范

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摘要

Although visible and near-infrared (Vis-NIR) spectroscopy can rapidly and nondestructively identify wood species, the conventional spectrometer approach relies on the aggregate light absorption due to the chemical composition of wood and light scattering originating from the physical structure of wood. Hence, much of the work in this area is still limited to further spectral pretreatments, such as baseline correction and standard normal variate to reduce the light scattering effects. However, it should be emphasized that the light scattering rather than absorption in wood is dominant, and this must be effectively utilized to achieve highly accurate and robust wood classification. Here a novel method based on spatially resolved diffuse reflectance (wavelength range: 600-1000 nm) was demonstrated to classify 15 kinds of wood. A portable Vis-NIR spectral measurement system was designed according to previous simulations and experimental results. To simplify spectral data analysis (i.e., against overfitting), support vector machine (SVM) model was constructed for wood sample classification using principal component analysis (PCA) scores. The classification accuracies of 98.6% for five-fold cross-validation and 91.2% for test set validation were achieved. This study offers enhanced classification accuracy and robustness over other conventional nondestructive approaches for such various kinds of wood and sheds light on utilizing visible and short-wave NIR light scattering for wood classification.
机译:虽然可见和近红外(Vis-NIR)光谱可以迅速和无损地识别木材物种,但传统的光谱仪接近依赖于源自木材物理结构的木材和光散射的化学成分引起的聚集光吸收。因此,该领域的大部分工作仍然仅限于进一步的光谱预处理,例如基线校正和标准正常变化以减少光散射效果。然而,应该强调的是,光散射而不是木材中的吸收占主导地位,这必须有效地利用来实现高度准确和坚固的木材分类。这里证明了一种基于空间分辨的漫反射率的新方法(波长范围:600-1000nm),以分类15种木材。根据先前的模拟和实验结果设计了一种便携式的VIR-NIR光谱测量系统。为了简化光谱数据分析(即,抗过度装备),使用主成分分析(PCA)分数构建支持向量机(SVM)模型进行木材样本分类。实现了5倍交叉验证的98.6%的分类精度和测试集验证的91.2%。本研究提供了由于其他种类的木材和棚灯利用用于木材分类的可见和短波NIR光散射而提供增强的分类准确性和鲁棒性。

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