基于连续小波变换(CWT)的拉曼信号处理及危险分子实时识别

A. Parmar, S. Gulia, S. Bajaj, V. Gambhir, R. Sharma, M. Reddy
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引用次数: 2

摘要

世界各地的恐怖分子不断使用炸药,因此非常需要炸药探测技术,特别是具有远距离探测潜力的技术。分子的拉曼振动谱为物种识别提供了很好的指纹图谱。手工分析拉曼签名耗时长,安全人员在实际场景中无法承受。拉曼信号的检测、采集和分析自动化是实际操作的要求。在这项工作中,我们开发了一个软件,可以自动满足所有这些过程,并最终提出被观察材料的名称进行对峙检测。这是基于连续小波变换(CWT)。该算法/软件能够识别/区分非常相似的化学品,如三硝基苯(TNB),三硝基甲苯(TNT)和二硝基甲苯(DNT)。
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Signal processing of Raman signatures and realtime identification of hazardous molecules using continuous wavelet transformation (CWT)
Continuous use of explosives by terrorists throughout the world has led to the great necessity in explosives detection technology, especially in technologies that have potential for stand-off detection. The Raman vibrational spectrum of molecules provides an excellent fingerprint for species identification. Analysis of Raman signatures manually is time-consuming and cannot be afford by security personal in real scenario. Automation of detection, acquisition and analysis of Raman signal is required for operations in real scenario. In this work, we have developed software which caters all these process automatically and finally mentions name of material under observation for standoff detection. This is based on continuous wavelet transformation (CWT). This algorithm/ software is capable of identifications/ discrimination of very similar chemicals like trinitrobenzene (TNB), trinitrotoluene (TNT) and dinitrotoluene (DNT).
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