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Advanced recognition of explosives in traces on polymer surfaces using LIBS and supervised learning classifiers

机译:使用LIBS和监督学习分类器对聚合物表面痕迹中的爆炸物进行高级识别

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摘要

The large similarity existing in the spectral emissions collected from organic compounds by laser-induced breakdown spectroscopy (LIBS) is a limiting factor for the use of this technology in the real world. Specifically, among the most ambitious challenges of today's LIBS involves the recognition of an organic residue when neglected on the surface of an object of identical nature. Under these circumstances, the development of an efficient algorithm to disclose the minute differences within this highly complex spectral information is crucial for a realistic application of LIBS in countering explosive threats. An approach cemented on scatter plots of characteristic emission features has been developed to identify organic explosives when located on polymeric surfaces (teflon, nylon and polyethylene). By using selected spectral variables, the approach allows to design a concise classifier for alerting when one of four explosives (DNT, TNT.RDX and PETN) is present on the surface of the polymer. Ordinary products (butter, fuel oil, hand cream, olive oil and motor oil) cause no confusion in the decisions taken by the classifier. With rates of false negatives and false positives below 5%, results demonstrate that the classification algorithm enables to label residues according to their harmful nature in the most demanding scenario for a LIBS sensor.
机译:通过激光诱导击穿光谱(LIBS)从有机化合物收集的光谱发射中存在的巨大相似性是在现实世界中使用该技术的限制因素。具体地说,当今的LIBS面临的最大挑战之一是,当忽略同一性质的物体表面上的有机残留物时,就会认识到这种残留物。在这种情况下,开发一种有效的算法来揭示这种高度复杂的光谱信息中的微小差异对于LIBS在应对爆炸性威胁中的实际应用至关重要。已经开发出一种结合在特征发射特征散布图上的方法,以识别有机炸药在聚合物表面(聚四氟乙烯,尼龙和聚乙烯)上时的位置。通过使用选定的光谱变量,该方法可以设计一种简洁的分类器,以在聚合物表面上存在四种炸药(DNT,TNT.RDX和PETN)之一时发出警报。普通产品(黄油,燃料油,护手霜,橄榄油和机油)不会使分类器的决定产生混淆。当假阴性和假阳性的比率低于5%时,结果表明,分类算法可以在LIBS传感器最苛刻的情况下根据残留物的有害性质来标记残留物。

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