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Comparison of Classification Methods for Spectral Data of Laser-Induced Fluorescence

机译:激光诱导荧光光谱数据分类方法的比较

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摘要

Online detection of CBRNE is a research field of growingudimportance due to its relevance for public security and defense. The selectivity of machine learning has reached maturity in order to distinguish very similar laser-induced udfluorescence (LIF) spectra of different samples - establishing the basis for an automatic classification. The work in this contribution applies the classification process of decision trees, support vector machines and artificial neural networks to LIF spectra. Two experimental setups with two excitation wavelengths each (280 and 355 nm;ud266 and 355 nm) and different spectral resolutions of about 1 nm and 12 nm, respectively, have been performed. In the first setup the discrimination of seven bacteria species with an accuracy of over 90 % is demonstrated. The data of the second setup with lower spectral resolution are equally sufficient for a subsequent classification. The results are compared and represented in a low-dimensional subspace for the purpose of visualization.
机译:由于其对公安和防御的相关性,CBRNE的在线检测是 Udimportance的研究领域。机器学习的选择性已达到成熟,以区分不同样本的非常相似的激光诱导的 Udfloorescence(LiF)光谱 - 建立自动分类的基础。该贡献中的工作适用于决策树的分类过程,支持向LIF光谱的判定树,支持向量机和人工神经网络。已经进行了两个具有两个激发波长的两个实验装置,每个激发波长(280和355nm; UD266和355nm)分别分别进行了约1nm和12nm的不同光谱分辨率。在第一次设置中,证明了七种细菌种类超过90%的细菌种类。具有较低频谱分辨率的第二设置的数据同样足以进行后续分类。比较结果,并以低维子空间表示,以便可视化。

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