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Endmember Signature Based Detection of Flammable Gases in LWIR Hyperspectral Images

机译:基于端元特征的LWIR高光谱图像中可燃气体的检测

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Segmentation and identification of compounds or materials existing in a scene is a crucial process. Hyperspectral sensors operating in different regions of the electromagnetic spectrum are able to quantify spectral characteristics of materials in different states. Due to the fact that some chemical compounds in gas state have insignificant light reflectance characteristics in visible region of the spectrum, imaging sensors operating in infrared regions are needed to sense energy absorbency characteristics of these compositions. The present study proposes a novel method for detection of flammable gases in long-wave infrared hyperspectral images. Proposed method begins with Black-Body radiation curve compensation. Since a priori information regarding the compounds in the scene is not always available, endmember spectral signatures are extracted with VCA hyperspectral unmixing algorithm. Afterwards, endmember signatures are matched with infrared energy absorbance signature of the target gas obtained from NIST (National Institute of Standards and Technology) Material Measurement Laboratory. Finally, concentration of target signature at each image pixel is detected by means of endmember abundance maps. The performance of the approach is compared with that of similarity measure based gas detection methods. It is observed that the proposed technique removes the need for an external threshold setting while providing better resolvability of the gasses.
机译:分割和识别场景中存在的化合物或材料是至关重要的过程。在电磁光谱的不同区域中运行的高光谱传感器能够量化处于不同状态的材料的光谱特征。由于某些气态化合物在光谱的可见光区具有微不足道的光反射特性,因此需要在红外区工作的成像传感器来感测这些组合物的能量吸收特性。本研究提出了一种新的方法来检测长波红外高光谱图像中的可燃气体。提出的方法始于黑体辐射曲线补偿。由于关于场景中化合物的先验信息并非总是可用,因此使用VCA高光谱解混算法提取端成员光谱特征。然后,将末端成员签名与从NIST(美国国家标准技术研究院)材料测量实验室获得的目标气体的红外能量吸收签名相匹配。最后,通过端成员丰度图检测每个图像像素上目标签名的浓度。将该方法的性能与基于相似性测量的气体检测方法进行了比较。观察到,提出的技术消除了对外部阈值设置的需要,同时提供了更好的气体可分辨性。

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