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Sensor data fusion for spectroscopy-based detection of explosives

机译:基于光谱检测的传感器数据融合

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In-situ trace detection of explosive compounds such as RDX, TNT, and ammonium nitrate, is an important problem for the detection of IEDs and IED precursors. Spectroscopic techniques such as LIBS and Raman have shown promise for the detection of residues of explosive compounds on surfaces from standoff distances. Indi-vidually, both LIBS and Raman techniques suffer from various limitations, e.g., their robustness and reliability suffers due to variations in peak strengths and locations. However, the orthogonal nature of the spectral and compositional information provided by these techniques makes them suitable candidates for the use of sensor fusion to improve the overall detection performance. In this paper, we utilize peak energies in a region by fitting Lorentzian or Gaussian peaks around the location of interest. The ratios of peak energies are used for discrim-ination, in order to normalize the effect of changes in overall signal strength. Two data fusion techniques are discussed in this paper. Multi-spot fusion is performed on a set of independent samples from the same region based on the maximum likelihood formulation. Furthermore, the results from LIBS and Raman sensors are fused using linear discriminators. Improved detection performance with significantly reduced false alarm rates is reported using fusion techniques on data collected for sponsor demonstration at Fort Leonard Wood.
机译:原位痕量检测炸药化合物如RDX,TNT和硝酸铵,是检测IED和IED前体的重要问题。诸如Libs和拉曼的光谱技术已经显示出在远距离距离的表面上检测炸药化合物的残留物。 Indi-Vidency,Libs和拉曼技术的遭受各种限制,例如,由于峰强度和位置的变化,它们的鲁棒性和可靠性受到影响。然而,通过这些技术提供的光谱和组成信息的正交性使其适用于使用传感器融合来改善整体检测性能的合适候选者。在本文中,我们通过围绕感兴趣的位置围绕洛伦兹或高斯峰来利用一个地区的峰值能量。峰值能量的比率用于判别,以便使整体信号强度变化的效果正常化。本文讨论了两个数据融合技术。基于最大似然制剂,在来自相同区域的一组独立样本上进行多点融合。此外,Libs和拉曼传感器的结果使用线性鉴别器融合。据报道,利用熔融伦纳德伍德堡的赞助商示范所收集的数据,提出了具有显着减少误报率的检测性能。

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