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利用推扫式扫描高光谱成像系统进行非破坏性爆炸物痕迹探测。

Non-Destructive Trace Detection of Explosives Using Pushbroom Scanning Hyperspectral Imaging System.

机构信息

Remote Sensing and GIS, School of Engineering and Technology, Asian Institute of Technology, Klong Luang, Pathum Thani 12120, Thailand.

出版信息

Sensors (Basel). 2018 Dec 28;19(1):97. doi: 10.3390/s19010097.

Abstract

The aim of this study was to investigate the potential of the non-destructive hyperspectral imaging system (HSI) and accuracy of the model developed using Support Vector Machine (SVM) for determining trace detection of explosives. Raman spectroscopy has been used in similar studies, but no study has been published which is based on measurement of reflectance from hyperspectral sensor for trace detection of explosives. HSI used in this study has an advantage over existing techniques due to its combination of imaging system and spectroscopy, along with being contactless and non-destructive in nature. Hyperspectral images of the chemical were collected using the BaySpec hyperspectral sensor which operated in the spectral range of 400⁻1000 nm (144 bands). Image processing was applied on the acquired hyperspectral image to select the region of interest (ROI) and to extract the spectral reflectance of the chemicals which were stored as spectral library. Principal Component Analysis (PCA) and first derivative was applied to reduce the high dimensionality of the image and to determine the optimal wavelengths between 400 and 1000 nm. In total, 22 out of 144 wavelengths were selected by analysing the loadings of principal components (PC). SVM was used to develop the classification model. SVM model established on the whole spectrum from 400 to 1000 nm achieved an accuracy of 81.11%, whereas an accuracy of 77.17% with less computational load was achieved when SVM model was established on the optimal wavelengths selected. The results of the study demonstrate that the hyperspectral imaging system along with SVM is a promising tool for trace detection of explosives.

摘要

本研究旨在探索非破坏性高光谱成像系统(HSI)和基于支持向量机(SVM)的模型的潜力,以实现爆炸物痕量检测。拉曼光谱已被用于类似的研究中,但尚未有研究基于高光谱传感器反射率测量来进行爆炸物痕量检测。本研究中使用的 HSI 具有优于现有技术的优势,因为它结合了成像系统和光谱学,同时具有非接触和非破坏性的特点。使用 BaySpec 高光谱传感器收集了化学物质的高光谱图像,该传感器的光谱范围为 400-1000nm(144 个波段)。对采集到的高光谱图像应用图像处理,以选择感兴趣的区域(ROI),并提取化学物质的光谱反射率,这些反射率被存储为光谱库。应用主成分分析(PCA)和一阶导数来降低图像的高维性,并确定 400-1000nm 之间的最佳波长。总共通过分析主成分(PC)的载荷,选择了 144 个波长中的 22 个。使用 SVM 开发分类模型。在 400-1000nm 的整个光谱上建立的 SVM 模型的准确率为 81.11%,而在选择最佳波长的基础上建立的 SVM 模型的准确率为 77.17%,同时计算负荷更小。研究结果表明,高光谱成像系统与 SVM 一起是一种有前途的爆炸物痕量检测工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8124/6339093/2fa02a4f0243/sensors-19-00097-g001.jpg

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