利用热成像光谱检测被遮挡目标

M. Shimoni, C. Perneel, J. Gagnon
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引用次数: 5

摘要

从图像序列中自动检测被遮挡的目标是防御相关应用的一个有趣的研究领域。本文研究了利用时间热高光谱场景对埋地简易爆炸装置(IED)的变化检测方法。具体而言,本文利用TELOPS Hyper-Cam传感器和基于多元统计的交叉协方差(Cross-Covariance, CC)和类条件变化检测器(类条件变化检测器,QCC)两种变化检测算法,对埋地小铝板的检测进行了评估。结果表明,基于光谱的变化检测是一种很好的检测扰动土下埋地简易爆炸装置的方法。此外,交叉协方差(Cross-Covariance, CC)和类条件(class-conditional, QCC)变化检测器能够将短时间序列作为长时间序列对来检测变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of occluded targets using thermal imaging spectroscopy
Automatic detection of occluded targets from a sequence of images is an interesting area of research for defense related application. In this paper, change detection methods are investigated for the detection of buried improvised explosive devices (IED) using temporal thermal hyperspectral scenes. Specifically, the paper assesses the detection of buried small aluminium plates using the TELOPS Hyper-Cam sensor and by applying two change detection algorithms: multivariate statistical based method (Cross-Covariance (CC)) and class-conditional change detector (QCC). It was found that spectral based change detection is a good method for the detection of buried IED under disturbed soil. Moreover, the Cross-Covariance (CC)) and the class-conditional (QCC) change detector were able to detect changes using short temporal sequences as long temporal sequences pairs.
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