German Aerospace Center (DLR), Institute of Technical Physics, Im Langen Grund 1, 74239 Hardthausen, Germany.
Sensors (Basel). 2020 Apr 29;20(9):2524. doi: 10.3390/s20092524.
Laser-induced fluorescence (LIF) is a well-established technique for monitoring chemical processes and for the standoff detection of biological substances because of its simple technical implementation and high sensitivity. Frequently, standoff LIF spectra from large molecules and bio-agents are only slightly structured and a gain of deeper information, such as classification, let alone identification, might become challenging. Improving the LIF technology by recording spectral and additionally time-resolved fluorescence emission, a significant gain of information can be achieved. This work presents results from a LIF based detection system and an analysis of the influence of time-resolved data on the classification accuracy. A multi-wavelength sub-nanosecond laser source is used to acquire spectral and time-resolved data from a standoff distance of 3.5 m. The data set contains data from seven different bacterial species and six types of oil. Classification is performed with a decision tree algorithm separately for spectral data, time-resolved data and the combination of both. The first findings show a valuable contribution of time-resolved fluorescence data to the classification of the investigated chemical and biological agents to their species level. Temporal and spectral data have been proven as partly complementary. The classification accuracy is increased from 86% for spectral data only to more than 92%.
激光诱导荧光(LIF)是一种成熟的技术,用于监测化学过程和生物物质的远距离检测,因为它具有简单的技术实现和高灵敏度。通常,来自大分子和生物制剂的远距离 LIF 光谱仅略微结构化,并且可能会难以获得更深层次的信息,例如分类,更不用说识别了。通过记录光谱和额外的时间分辨荧光发射来改进 LIF 技术,可以获得显著的信息增益。这项工作展示了基于 LIF 的检测系统的结果,并分析了时间分辨数据对分类准确性的影响。使用多波长亚纳秒激光源从 3.5 米的远距离获取光谱和时间分辨数据。数据集包含来自七种不同细菌物种和六种类型油的信息。使用决策树算法分别对光谱数据、时间分辨数据及其组合进行分类。初步发现表明,时间分辨荧光数据对所研究的化学和生物制剂的分类具有重要贡献,可以达到物种水平。时间和光谱数据已被证明是部分互补的。分类准确性从仅使用光谱数据的 86%提高到 92%以上。